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The neural ring: Using algebraic geometry to analyze neural codes.

机译:神经环:使用代数几何分析神经代码。

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摘要

Neurons in the brain represent external stimuli via neural codes. These codes often arise from stimulus-response maps, associating to each neuron a convex receptive field. An important problem confronted by the brain is to infer properties of a represented stimulus space without knowledge of the receptive fields, using only the intrinsic structure of the neural code. How does the brain do this? To address this question, it is important to determine what stimulus space features can - in principle - be extracted from neural codes. This motivates us to define the neural ring and a related neural ideal, algebraic objects that encode the full combinatorial data of a neural code. We find that these objects can be expressed in a "canonical form" that directly translates to a minimal description of the receptive field structure intrinsic to the neural code. We consider the algebraic properties of homomorphisms between neural rings, which naturally relate to maps between neural codes. We show that maps between two neural codes are in bijection with ring homomorphisms between the respective neural rings, and define the notion of neural ring homomorphism, a special restricted class of ring homomorphisms which preserve neuron structure. We also find connections to Stanley-Reisner rings, and use ideas similar to those in the theory of monomial ideals to obtain an algorithm for computing the canonical form associated to any neural code, providing the groundwork for inferring stimulus space features from neural activity alone.
机译:大脑中的神经元通过神经代码表示外部刺激。这些代码通常来自刺激反应图,将每个神经元关联一个凸形的接收场。大脑面临的一个重要问题是仅使用神经密码的固有结构来推断表示的刺激空间的性质,而无需了解感受野。大脑如何做到这一点?为了解决这个问题,重要的是确定原则上可以从神经代码中提取出哪些刺激空间特征。这促使我们定义神经环和相关的神经理想代数对象,这些对象对神经代码的完整组合数据进行编码。我们发现这些对象可以用“规范形式”表示,该规范形式直接转换为对神经代码固有的接受场结构的最小描述。我们考虑神经环之间同态的代数性质,这自然与神经代码之间的映射有关。我们表明,两个神经代码之间的映射与各个神经环之间的环同态是双射的,并定义了神经环同态的概念,神经环同态是保留神经元结构的特殊受限类环同态。我们还找到了与Stanley-Reisner环的连接,并使用与单项理想理论相似的思想来获得一种算法,用于计算与任何神经密码相关的规范形式,从而为仅从神经活动推断刺激空间特征提供了基础。

著录项

  • 作者

    Youngs, Nora Esther.;

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Mathematics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 114 p.
  • 总页数 114
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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