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	<title>Comments on: Virtual Neurons Acting Like the Real Thing &#8211; The Blue Brain Project</title>
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	<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/</link>
	<description>The Future Is Here Today...Robotics, Genetics, AI, Longevity, The Brain...</description>
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		<title>By: morshedreo</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-49737</link>
		<dc:creator>morshedreo</dc:creator>
		<pubDate>Mon, 19 Sep 2011 08:03:18 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-49737</guid>
		<description>Excellent post. It is one of the best post from other. It is a useful and charming post. I want to sharing this topic with some of my close friends. So thanks this post.

&lt;a href=&quot;http://www.energysmartindustry.com/&quot; rel=&quot;nofollow&quot;&gt;Light bulb&lt;/a&gt;</description>
		<content:encoded><![CDATA[<p>Excellent post. It is one of the best post from other. It is a useful and charming post. I want to sharing this topic with some of my close friends. So thanks this post.</p>
<p><a href="http://www.energysmartindustry.com/" rel="nofollow">Light bulb</a></p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dajkg</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-36237</link>
		<dc:creator>Dajkg</dc:creator>
		<pubDate>Fri, 15 Oct 2010 03:17:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-36237</guid>
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Bedrooms are a place for rest and relaxation. The simplicity of modern bedroom designs creates a calmness that makes that feeling even more prevalent, There are funny and strange bedrooms with different shapes .
</description>
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Bedrooms are a place for rest and relaxation. The simplicity of modern bedroom designs creates a calmness that makes that feeling even more prevalent, There are funny and strange bedrooms with different shapes .</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dajkg</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-36236</link>
		<dc:creator>Dajkg</dc:creator>
		<pubDate>Fri, 15 Oct 2010 03:17:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-36236</guid>
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The earpiece also works with most phones that allow Bluetooth connections, although Earloomz suggests users check their phone manual to be sure.
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The earpiece also works with most phones that allow Bluetooth connections, although Earloomz suggests users check their phone manual to be sure.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dajkg</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-36235</link>
		<dc:creator>Dajkg</dc:creator>
		<pubDate>Fri, 15 Oct 2010 03:17:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-36235</guid>
		<description>&lt;a href=&quot;http://louisvuittonbelt.com/&quot; rel=&quot;nofollow&quot;&gt;Louis Vuitton belt&lt;/a&gt;, Classic &lt;a href=&quot;http://louisvuittonbelt.com/&quot; rel=&quot;nofollow&quot;&gt;Louis Vuitton belts&lt;/a&gt;, &lt;a href=&quot;http://louisvuittonbelt.com/&quot; rel=&quot;nofollow&quot;&gt;Louis Vuitton belts for men&lt;/a&gt;, with prefect condition &lt;a href=&quot;http://louisvuittonbelt.com/&quot; rel=&quot;nofollow&quot;&gt;Louis Vuitton Mens belt&lt;/a&gt;.
The Value of the UK Fashion Industry report was commissioned by the British Fashion Council and seeks for the first time to quantify the true economic and social impact of the UK fashion industry. 
</description>
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The Value of the UK Fashion Industry report was commissioned by the British Fashion Council and seeks for the first time to quantify the true economic and social impact of the UK fashion industry.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dajkg</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-36234</link>
		<dc:creator>Dajkg</dc:creator>
		<pubDate>Fri, 15 Oct 2010 03:17:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-36234</guid>
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The Value of the UK Fashion Industry report was commissioned by the British Fashion Council and seeks for the first time to quantify the true economic and social impact of the UK fashion industry. 
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The Value of the UK Fashion Industry report was commissioned by the British Fashion Council and seeks for the first time to quantify the true economic and social impact of the UK fashion industry.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dajkg</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-36233</link>
		<dc:creator>Dajkg</dc:creator>
		<pubDate>Fri, 15 Oct 2010 03:16:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-36233</guid>
		<description>&lt;a href=&quot;http://designer-belts.net/&quot; rel=&quot;nofollow&quot;&gt;designer belts&lt;/a&gt;, &lt;a href=&quot;http://designer-belts.net/&quot; rel=&quot;nofollow&quot;&gt;designer belt&lt;/a&gt;, &lt;a href=&quot;http://designer-belts.net/&quot; rel=&quot;nofollow&quot;&gt;mens designer belt&lt;/a&gt;, Elegant &lt;a href=&quot;http://designer-belts.net/&quot; rel=&quot;nofollow&quot;&gt;designer belts for men&lt;/a&gt;.
This florist in Kensal Rise is an olfactory sensation, overflowing with flowers, foliage and stacks of ancient-looking vases and crockery. It all looks as if Vicky, the owner, has picked the flowers fresh from the meadows that day. 
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This florist in Kensal Rise is an olfactory sensation, overflowing with flowers, foliage and stacks of ancient-looking vases and crockery. It all looks as if Vicky, the owner, has picked the flowers fresh from the meadows that day.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dajkg</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-36232</link>
		<dc:creator>Dajkg</dc:creator>
		<pubDate>Fri, 15 Oct 2010 03:15:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-36232</guid>
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Adjusting your diet to a healthier way of eating is a way to lose belly fat without dieting that works for many people. Instead of putting yourself on a restrictive and often unsafe diet, you can try adjusting the way you eat. Instead of five cookies, maybe have one small slice of low fat angel food cake. Simple exchanges like that will provide you with a way of eating that will keep you healthy your entire life. 
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Adjusting your diet to a healthier way of eating is a way to lose belly fat without dieting that works for many people. Instead of putting yourself on a restrictive and often unsafe diet, you can try adjusting the way you eat. Instead of five cookies, maybe have one small slice of low fat angel food cake. Simple exchanges like that will provide you with a way of eating that will keep you healthy your entire life.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dr. Ronald Swallow</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-16807</link>
		<dc:creator>Dr. Ronald Swallow</dc:creator>
		<pubDate>Tue, 20 Apr 2010 18:47:49 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-16807</guid>
		<description>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE
                                               By Dr. Ronald J. Swallow
                                                     ronswallow@ptd.net
		                                610 704 0914

I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. 

The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.

Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. 

If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  

The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  

Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.

Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.

Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.

Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</description>
		<content:encoded><![CDATA[<p>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE<br />
                                               By Dr. Ronald J. Swallow<br />
                                                     <a href="mailto:ronswallow@ptd.net">ronswallow@ptd.net</a><br />
		                                610 704 0914</p>
<p>I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. </p>
<p>The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.</p>
<p>Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. </p>
<p>If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  </p>
<p>The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  </p>
<p>Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.</p>
<p>Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.</p>
<p>Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.</p>
<p>Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dr. Ronald Swallow</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-32601</link>
		<dc:creator>Dr. Ronald Swallow</dc:creator>
		<pubDate>Tue, 20 Apr 2010 18:47:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-32601</guid>
		<description>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE
                                               By Dr. Ronald J. Swallow
                                                     ronswallow@ptd.net
		                                610 704 0914

I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. 

The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.

Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. 

If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  

The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  

Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.

Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.

Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.

Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</description>
		<content:encoded><![CDATA[<p>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE<br />
                                               By Dr. Ronald J. Swallow<br />
                                                     <a href="mailto:ronswallow@ptd.net">ronswallow@ptd.net</a><br />
		                                610 704 0914</p>
<p>I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. </p>
<p>The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.</p>
<p>Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. </p>
<p>If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  </p>
<p>The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  </p>
<p>Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.</p>
<p>Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.</p>
<p>Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.</p>
<p>Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dr. Ronald Swallow</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-16806</link>
		<dc:creator>Dr. Ronald Swallow</dc:creator>
		<pubDate>Tue, 20 Apr 2010 18:46:33 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-16806</guid>
		<description>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE
                                               By Dr. Ronald J. Swallow
                                                     rswallow@ptd.net
		                                610 704 0914

I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. 

The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.

Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. 

If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  

The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  

Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.

Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.

Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.

Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</description>
		<content:encoded><![CDATA[<p>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE<br />
                                               By Dr. Ronald J. Swallow<br />
                                                     <a href="mailto:rswallow@ptd.net">rswallow@ptd.net</a><br />
		                                610 704 0914</p>
<p>I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. </p>
<p>The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.</p>
<p>Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. </p>
<p>If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  </p>
<p>The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  </p>
<p>Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.</p>
<p>Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.</p>
<p>Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.</p>
<p>Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Dr. Ronald Swallow</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-32600</link>
		<dc:creator>Dr. Ronald Swallow</dc:creator>
		<pubDate>Tue, 20 Apr 2010 18:46:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-32600</guid>
		<description>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE
                                               By Dr. Ronald J. Swallow
                                                     rswallow@ptd.net
		                                610 704 0914

I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. 

The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.

Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. 

If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  

The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  

Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.

Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.

Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.

Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</description>
		<content:encoded><![CDATA[<p>LOGICAL EXTRACTION OF NEOCORTEX STRUCTURE<br />
                                               By Dr. Ronald J. Swallow<br />
                                                     <a href="mailto:rswallow@ptd.net">rswallow@ptd.net</a><br />
		                                610 704 0914</p>
<p>I do not understand why the neocortex is a mystery to everyone.  Its neuron net circuit is repeated throughout the cortex.  It consists of excitatory and inhibitory neurons whose functions, each, have been known for decades.  The neuron net circuit is repeated over layers whose axonal outputs feed on as inputs to other layers.  The neurons of each layer, each receive axonal inputs from one or more sending layers and all that they can do is correlate the axonal input stimulus pattern with their axonal connection patterns from those inputs and produce an output frequency related to the resultant PSPs.  Axonal growth toward a neuron is definitely the mechanism for permanent memory formation and it is just what is needed to implement conditioned reflex learning.  This axonal growth must be under the control of the glial cells and must be a function of the signals surrounding the neurons. </p>
<p>The cortex is known to be able to do pattern recognition and the correlation between an axonal input stimulus and an axonal input connection pattern is just what is needed to do pattern recognition.  However, pattern recognition needs normalized correlations and a means to compare these correlations so that the largest correlation is recognized by the neurons.  Without normalization, the PSPs relative values would not be bounded properly and could not be used to determine the best pattern match.  In order to get PSPs to be compared so that the maximum PSP neuron would fire, the inhibitory neuron is needed.  By having a group of excitatory neurons feed an inhibitory neuron that feeds back inhibitory axonal signals to those excitatory neurons, one is able to have the PSPs of the excitatory neurons compared, with the neuron with the largest PSP firing before the others do as the inhibitory signal decays after each excitatory stimulus, thus inhibiting the other excitatory neurons with the smaller PSPs.  This inhibitory neuron is needed in order to achieve PSP comparisons, no question about it.  For a meaningful comparison, the PSPs must be normalized.  As unlikely as it may seem possible, it comes out that the inhibitory connections growing by the same rules as excitatory connections grow to a value which accomplishes the normalization.  That is, as the excitatory axon pattern grows via conditioned reflex rules, the inhibitory axon to each excitatory neuron grows to a value equal to the square root of the sum of the squares of the excitatory connections.  This can be shown by a mathematical analysis of a group of mutually inhibiting neurons under conditioned reflex learning.  This normalization does not require the neurons to behave differently from that known for decades, but rather requires that they interact with an inhibitory neuron as described.</p>
<p>Thus, by simply having the inhibitory neurons receive from neighboring excitatory neurons with large connection strengths where if the excitatory neuron fires, the inhibitory neuron fires and by allowing the inhibitory axonal signals be included with the excitatory axonal input signals as the inputs to those excitatory neurons, the neocortex is able to do normalized conditioned reflex pattern recognition as its basic function. </p>
<p>If one thinks about it, layers of mutually inhibiting groups of neurons are all that are needed to explain the neocortex functions.  The layers of neurons are able to exhibit conditioned reflex behavior between sub-patterns, generating new learned behaviors as observed by the human.  With layer to layer feedback, multi-stable behavior of layers of neurons results, forming short term memory patterns that become part of the stimulus to other neurons.  With normalized correlations, there is always an axonal input stimulus pattern that will excite every excitatory neuron.  </p>
<p>The only way to prove this cortex model is to build a simulator modeling large nets of neurons and to observe resultant human behaviors.  Most certainly we will never be able to measure the neuron nets of the cortex due to their small sizes.  This means, that research projects must be formed that do these simulations and do not waste R&amp;D efforts to try to measure properties of the cortex as the main means to understand the cortex.  Certainly the area to area connection scheme is needed, but it likely can be varied, still with intelligence being exhibited.  Trials will be needed to determine the initial connection strengths when initiating the simulator.  These connections will need to be simple such as non-zero between corresponding neurons of the mutually inhibiting groups.  </p>
<p>Axon growth toward pulsing neurons is the likely mechanism for memory alteration.  Alternatively, having neuron axons back away from neurons has no physical basis and it is well known that the number of axons increases with age in the human. Certainly axon connection strengths never become proportional to axon pulsing frequencies, otherwise the nets of neurons will never exhibit permanent past memories, but rather be a function of recent events only.  Glial cells are likely participants to axonal growth control.  It is likely that they will inhibit axonal growth physically, unless a chemical falls below a concentration.  In particular, this would be when the excitatory stimulus (chemically emitted to a neuron by axons to that neuron) to a cell, falls below a critical level, where the correlation between stimulus and connection pattern falls below a limit.  The result of such a rule is that learning would only occur if stimulus patterns are new and don’t sufficiently match the connection patterns to neurons.  The psychological effect would be a curiosity behavior, observed in humans.  Also, it would result in old age reduction of ability to learn, also observed in humans.</p>
<p>Progress in understanding how the brain works has been basically non-existent over the last 40 years due to limits in measurement.  Rather, progress requires simulation to work out the missing details.  I predict that simulation will dominate the future efforts of researchers.</p>
<p>Also, I predict that special purpose hardware will dominate the approach.  Using conventional computers to simulate nets of neurons in real-time will go out of style very soon due to their high cost and poor performance.</p>
<p>Simulation permits an evolution process to arrive upon a successful understanding of the brain.  If a logical conclusion is wrong, simulation will eliminate it.  If it is right, simulation will verify it.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Smriti</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-14965</link>
		<dc:creator>Smriti</dc:creator>
		<pubDate>Mon, 22 Mar 2010 11:37:28 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-14965</guid>
		<description>Can anyone tell me that what are the mathematical forms or equations that are primarily fed to the computers? I mean if i excite the brain by showing a flower then what are the forms of equations or mathematical equations that the computers are fed after which the supercomputer is carrying the program?? please help me with this.</description>
		<content:encoded><![CDATA[<p>Can anyone tell me that what are the mathematical forms or equations that are primarily fed to the computers? I mean if i excite the brain by showing a flower then what are the forms of equations or mathematical equations that the computers are fed after which the supercomputer is carrying the program?? please help me with this.</p>
]]></content:encoded>
	</item>
	<item>
		<title>By: Smriti</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-32599</link>
		<dc:creator>Smriti</dc:creator>
		<pubDate>Mon, 22 Mar 2010 11:37:00 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-32599</guid>
		<description>Can anyone tell me that what are the mathematical forms or equations that are primarily fed to the computers? I mean if i excite the brain by showing a flower then what are the forms of equations or mathematical equations that the computers are fed after which the supercomputer is carrying the program?? please help me with this.</description>
		<content:encoded><![CDATA[<p>Can anyone tell me that what are the mathematical forms or equations that are primarily fed to the computers? I mean if i excite the brain by showing a flower then what are the forms of equations or mathematical equations that the computers are fed after which the supercomputer is carrying the program?? please help me with this.</p>
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	</item>
	<item>
		<title>By: The Brain According to Henry Markram (Video) &#124; Singularity Hub</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-10220</link>
		<dc:creator>The Brain According to Henry Markram (Video) &#124; Singularity Hub</dc:creator>
		<pubDate>Fri, 13 Nov 2009 15:55:52 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-10220</guid>
		<description>[...] is neither the first Blue Brain Project story, nor even the first video of Markram that we&#8217;ve discussed here at Singularity Hub. What keeps [...]</description>
		<content:encoded><![CDATA[<p>[...] is neither the first Blue Brain Project story, nor even the first video of Markram that we&#8217;ve discussed here at Singularity Hub. What keeps [...]</p>
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	</item>
	<item>
		<title>By: gary maloney</title>
		<link>http://singularityhub.com/2009/04/30/virtual-neurons-acting-like-the-real-thing-the-blue-brain-project/#comment-8924</link>
		<dc:creator>gary maloney</dc:creator>
		<pubDate>Fri, 09 Oct 2009 17:44:22 +0000</pubDate>
		<guid isPermaLink="false">http://singularityhub.com/?p=2853#comment-8924</guid>
		<description>Deep Computed BCI: A Short Story
Imagine your motor cortex fully activated while you have full muscle tone but both what your cortex says you are experiencing and what you are actually experiencing are not what you body is actually doing. You were trained to do this on a brain computer interface. Highly Skilled lucid dreamers in intense sessions and brain tomography on the level of seismic tomography make this all possible. Accessing the brain thru non-invasive means is vital in Berlin where Brain Computer Interfacers and the Locked-in are moving things with only their minds; however, one might say that all this research is treading water awaiting advances in Neuro-surgery.  I’m pitching the thoroughly developed non-invasive technique as a necessary prelude to the invasive interface.  I’m just looking for sympathetic places to post the story I’m telling in the form of a fictitious photo journal.</description>
		<content:encoded><![CDATA[<p>Deep Computed BCI: A Short Story<br />
Imagine your motor cortex fully activated while you have full muscle tone but both what your cortex says you are experiencing and what you are actually experiencing are not what you body is actually doing. You were trained to do this on a brain computer interface. Highly Skilled lucid dreamers in intense sessions and brain tomography on the level of seismic tomography make this all possible. Accessing the brain thru non-invasive means is vital in Berlin where Brain Computer Interfacers and the Locked-in are moving things with only their minds; however, one might say that all this research is treading water awaiting advances in Neuro-surgery.  I’m pitching the thoroughly developed non-invasive technique as a necessary prelude to the invasive interface.  I’m just looking for sympathetic places to post the story I’m telling in the form of a fictitious photo journal.</p>
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