Information-Theoretic Tools to Understand Distributed Source Coding in Neuroscience

Ariel K. Feldman;Praveen Venkatesh;Douglas J. Weber;Pulkit Grover
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引用次数: 0

Abstract

This paper brings together topics of two of Berger’s main contributions to information theory: distributed source coding, and living information theory. Our goal is to understand which information theory techniques can be helpful in understanding a distributed source coding strategy used by the natural world. Towards this goal, we study the example of the encoding of location of an animal by grid cells in its brain. We use information measures of partial information decomposition (PID) to assess the unique, redundant, and synergistic information carried by multiple grid cells, first for simulated grid cells utilizing known encodings, and subsequently for data from real grid cells. In all cases, we make simplifying assumptions so we can assess the consistency of specific PID definitions with intuition. Our results suggest that the measure of PID proposed by Bertschinger et al. (Entropy, 2014) provides intuitive insights on distributed source coding by grid cells, and can be used for subsequent studies for understanding grid-cell encoding as well as broadly in neuroscience.
理解神经科学中分布式源编码的信息论工具
本文汇集了伯杰对信息论的两大贡献:分布式源编码和生命信息论。我们的目标是了解哪些信息论技术有助于理解自然界使用的分布式源编码策略。为了实现这一目标,我们以动物大脑中的网格细胞对其位置进行编码为例进行研究。我们使用部分信息分解(PID)的信息量来评估多个网格细胞所携带的独特、冗余和协同信息,首先是利用已知编码的模拟网格细胞,然后是真实网格细胞的数据。在所有情况下,我们都做了简化假设,以便评估特定 PID 定义与直觉的一致性。我们的结果表明,Bertschinger 等人提出的 PID 测量方法(熵,2014 年)为网格细胞的分布式源编码提供了直观的见解,可用于后续研究,以了解网格细胞编码以及广泛的神经科学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.20
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