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Assessing the Relevance of Specific Response Features in the Neural Code

机译:评估神经法规中特定反应特征的相关性

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摘要

The study of the neural code aims at deciphering how the nervous system maps external stimuli into neural activity—the encoding phase—and subsequently transforms such activity into adequate responses to the original stimuli—the decoding phase. Several information-theoretical methods have been proposed to assess the relevance of individual response features, as for example, the spike count of a given neuron, or the amount of correlation in the activity of two cells. These methods work under the premise that the relevance of a feature is reflected in the information loss that is induced by eliminating the feature from the response. The alternative methods differ in the procedure by which the tested feature is removed, and the algorithm with which the lost information is calculated. Here we compare these methods, and show that more often than not, each method assigns a different relevance to the tested feature. We demonstrate that the differences are both quantitative and qualitative, and connect them with the method employed to remove the tested feature, as well as the procedure to calculate the lost information. By studying a collection of carefully designed examples, and working on analytic derivations, we identify the conditions under which the relevance of features diagnosed by different methods can be ranked, or sometimes even equated. The condition for equality involves both the amount and the type of information contributed by the tested feature. We conclude that the quest for relevant response features is more delicate than previously thought, and may yield to multiple answers depending on methodological subtleties.
机译:对神经代码的研究旨在破译神经系统如何将外部刺激映射为神经活动(编码阶段),然后将此类活动转换为对原始刺激的适当响应(解码阶段)。已经提出了几种信息理论方法来评估个体反应特征的相关性,例如,给定神经元的尖峰计数或两个细胞活性中的相关量。这些方法在以下前提下工作:将特征的相关性反映在通过从响应中消除特征而引起的信息丢失中。替代方法的不同之处在于,删除受测功能的过程以及计算丢失信息的算法。在这里,我们对这些方法进行了比较,并显示出,每种方法通常都会为测试的功能分配不同的相关性。我们证明差异是定量的和定性的,并将它们与用于删除测试特征的方法以及计算丢失信息的过程联系起来。通过研究精心设计的示例集合,并进行分析推导,我们确定了可以对使用不同方法诊断出的特征的相关性进行排名甚至等同的条件。平等的条件涉及测试功能提供的信息量和信息类型。我们得出结论,对相关响应特征的追求比以前认为的要微妙,并且可能会根据方法的细微之处而产生多个答案。

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