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The minimum information principle and its application to neural code analysis

机译:最小信息原理及其在神经代码分析中的应用

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摘要

The study of complex information processing systems requires appropriate theoretical tools to help unravel their underlying design principles. Information theory is one such tool, and has been utilized extensively in the study of the neural code. Although much progress has been made in information theoretic methodology, there is still no satisfying answer to the question: “What is the information that a given property of the neural population activity (e.g., the responses of single cells within the population) carries about a set of stimuli?” Here, we answer such questions via the minimum mutual information (MinMI) principle. We quantify the information in any statistical property of the neural response by considering all hypothetical neuronal populations that have the given property and finding the one that contains the minimum information about the stimuli. All systems with higher information values necessarily contain additional information processing mechanisms and, thus, the minimum captures the information related to the given property alone. MinMI may be used to measure information in properties of the neural response, such as that conveyed by responses of small subsets of cells (e.g., singles or pairs) in a large population and cooperative effects between subunits in networks. We show how the framework can be used to study neural coding in large populations and to reveal properties that are not discovered by other information theoretic methods.
机译:对复杂信息处理系统的研究需要适当的理论工具来帮助阐明其基本设计原理。信息论就是这样一种工具,并且已经在神经代码的研究中得到了广泛的利用。尽管信息理论方法学已经取得了很大进展,但是对于以下问题仍然没有令人满意的答案:“神经种群活动的给定属性(例如,种群中单个细胞的响应)携带的信息是什么?刺激?”在这里,我们通过最小互信息(MinMI)原理回答此类问题。我们通过考虑具有给定属性的所有假设的神经元种群并找到包含有关刺激的最少信息的种群来量化神经反应的任何统计属性中的信息。具有较高信息值的所有系统都必须包含其他信息处理机制,因此,最小值将仅捕获与给定属性有关的信息。 MinMI可用于测量神经反应性质的信息,例如由大量人群中细胞的小子集(例如,单细胞或成对细胞)的反应以及网络中亚基之间的协同作用所传达的信息。我们展示了如何使用该框架来研究大群体的神经编码并揭示其他信息理论方法未发现的属性。

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