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Two projects in theoretical neuroscience: A convolution-based metric for neural membrane potentials and a combinatorial connectionist semantic network method.

机译:理论神经科学方面的两个项目:基于卷积的神经膜电位度量和组合连接语义网络方法。

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摘要

In this work, I present two projects that both contribute to the aim of discovering how intelligence manifests in the brain.;The first project is a method for analyzing recorded neural signals, which takes the form of a convolution-based metric on neural membrane potential recordings. Relying only on integral and algebraic operations, the metric compares the timing and number of spikes within recordings as well as the recordings' subthreshold features: summarizing differences in these with a single "distance" between the recordings. Like van Rossum's (2001) metric for spike trains, the metric is based on a convolution operation that it performs on the input data. The kernel used for the convolution is carefully chosen such that it produces a desirable frequency space response and, unlike van Rossum's kernel, causes the metric to be first order both in differences between nearby spike times and in differences between same-time membrane potential values: an important trait.;The second project is a combinatorial syntax method for connectionist semantic network encoding. Combinatorial syntax has been a point on which those who support a symbol-processing view of intelligent processing and those who favor a connectionist view have had difficulty seeing eye-to-eye. Symbol-processing theorists have persuasively argued that combinatorial syntax is necessary for certain intelligent mental operations, such as reasoning by analogy. Connectionists have focused on the versatility and adaptability offered by self-organizing networks of simple processing units. With this project, I show that there is a way to reconcile the two perspectives and to ascribe a combinatorial syntax to a connectionist network. The critical principle is to interpret nodes, or units, in the connectionist network as bound integrations of the interpretations for nodes that they share links with. Nodes need not correspond exactly to neurons and may correspond instead to distributed sets, or assemblies, of neurons.
机译:在这项工作中,我提出了两个项目,这两个项目都有助于发现智力在大脑中的表现方式。;第一个项目是一种分析记录的神经信号的方法,采取基于卷积的神经膜电位度量标准的形式录音。该度量标准仅依靠积分和代数运算,比较记录中尖峰的时间和数量以及记录的亚阈值功能:使用记录之间的单个“距离”总结这些差异。类似于van Rossum(2001)的峰值训练量度,该量度基于对输入数据执行的卷积运算。精心选择用于卷积的核,以使其产生理想的频率空间响应,并且与van Rossum的核不同,它使度量在附近尖峰时间之间的差异和同时膜电位值之间的差异上均处于一阶:一个重要特征。第二个项目是用于连接主义语义网络编码的组合语法方法。组合语法已成为支持智能处理的符号处理视图的人和支持连接主义视图的人眼中难于理解的观点。符号处理理论家有说服力地指出,组合语法对于某些智能思维操作(例如类比推理)是必需的。连接主义者专注于简单处理单元的自组织网络提供的多功能性和适应性。在这个项目中,我向您展示了一种调和两种观点并将组合语法归因于连接主义网络的方法。关键原则是将连接主义网络中的节点或单元解释为与它们共享链接的节点的解释的绑定集成。节点不必完全对应于神经元,而可以对应于神经元的分布式集或集合。

著录项

  • 作者

    Evans, Garrett Nolan.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Theoretical physics.;Applied mathematics.;Neurosciences.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 102 p.
  • 总页数 102
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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