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  <title>NITRC News Group Forum: neural-network-function-</title>
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  <description>&lt;img src=&quot;http://www.incf.org/newsroom/highlights/neural-network-function/image&quot; alt=&quot;Neural Network Function &quot; title=&quot;Neural Network Function &quot; height=&quot;128&quot; width=&quot;128&quot; /&gt;&lt;p&gt;In Frontiers of Computational Neuroscience, members of INCF Indian Node suggest that cell groups in the CA3-CA1 network robustly follow a consistent set of linear summation and gain-control rules, notwithstanding the intrinsic non-linearities of individual neurons. Cell-group responses remain linear, with well-defined transformations following inhibitory modulation and plasticity. The measures of these transformations provide useful parameters to apply to neural network analyses involving modulation and plasticity.&lt;/p&gt;</description>
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