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Analyzing Neural Responses to Natural Signals: Maximally Informative Dimensions

机译:分析对自然信号的神经反应:信息量最大

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摘要

We propose a method that allows for a rigorous statistical analysis of neural responses to natural stimuli that are nongaussian and exhibit strong correlations. We have in mind a model in which neurons are selective for a small number of stimulus dimensions out of a high-dimensional stimulus space, but within this subspace the responses can be arbitrarily nonlinear. Existing analysis methods are based on correlation functions between stimuli and responses, but these methods are guaranteed to work only in the case of gaussian stimulus ensembles. As an alternative to correlation functions, we maximize the mutual information between the neural responses and projections of the stimulus onto low-dimensional subspaces. The procedure can be done iteratively by increasing the dimensionality of this subspace. Those dimensions that allow the recovery of all of the information between spikes and the full unprojected stimuli describe the relevant subspace. If the dimensionality of the relevant subspace indeed is small, it becomes feasible to map the neuron's input-output function even under fully natural stimulus conditions. These ideas are illustrated in simulations on model visual and auditory neurons responding to natural scenes and sounds, respectively.
机译:我们提出了一种方法,可以对非自然的,表现出强相关性的自然刺激的神经反应进行严格的统计分析。我们想到了一个模型,其中神经元对高维刺激空间中的少量刺激维具有选择性,但在此子空间内,响应可以是任意非线性的。现有的分析方法是基于刺激和反应之间的相关函数,但是保证这些方法仅在高斯刺激集合的情况下有效。作为相关函数的替代方法,我们最大化了神经反应和对低维子空间的刺激投影之间的相互信息。该过程可以通过增加此子空间的维数来迭代完成。那些可以恢复尖峰和完全未投射的刺激之间的所有信息的维度描述了相关的子空间。如果相关子空间的维数确实很小,那么即使在完全自然的刺激条件下,映射神经元的输入输出功能也是可行的。这些想法分别在模型视觉和听觉神经元响应自然场景和声音的仿真中得到了说明。

著录项

  • 来源
    《Neural computation》 |2004年第2期|p.223-250|共28页
  • 作者单位

    Sloan-Swartz Center for Theoretical Neurobiology and Department of Physiology, University of California at San Francisco, San Francisco, CA 94143, U.S.A.;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

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