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How else can we define Information Flow in Neural Circuits?

机译:我们还能如何定义神经回路中的信息流?

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Recently, we developed a systematic framework for defining and inferring flows of information about a specific message in neural circuits [2], [3]. We defined a computational model of a neural circuit consisting of computational nodes and transmissions being sent between these nodes over time. We then gave a formal definition of information flow pertaining to a specific message, which was capable of identifying paths along which information flowed in such a system. However, this definition also had some non-intuitive properties, such as the existence of "orphans"—nodes from which information flowed out, even though no information flowed in. In part, these non-intuitive properties arose because we restricted our attention to measures that were functions of transmissions at a single time instant, and measures that were observational rather than counterfactual. In this paper, we consider alternative definitions, including one that is a function of transmissions at multiple time instants, one that is counterfactual, and a new observational definition. We show that a definition of information flow based on counterfactual causal influence (CCI) guarantees the existence of information paths while also having no orphans. We also prove that no observational definition of information flow that satisfies the information path property can match CCI in every instance. Furthermore, each of the definitions we examine (including CCI) is shown to have examples in which the information flow can take a non-intuitive path. Nevertheless, we believe our framework remains more amenable to drawing clear interpretations than classical tools used in neuroscience, such as Granger Causality.The full version of this paper is available online [1].
机译:最近,我们开发了一个系统框架,用于定义和推断有关神经回路中特定消息的信息流[2],[3]。我们定义了一个神经电路的计算模型,该模型由计算节点和随时间推移在这些节点之间发送的传输组成。然后,我们给出了与特定消息有关的信息流的正式定义,该定义能够识别在这样的系统中信息沿其流动的路径。但是,此定义也具有一些非直觉的属性,例如存在“孤儿”,即从中流出信息的节点,即使没有信息流入。这些非直觉的属性的出现部分是因为我们将注意力集中在即时传输的功能,以及观察而不是反事实的措施。在本文中,我们考虑了替代定义,包括一个定义是多个时间传输的函数,一个是反事实的,以及一个新的观测定义。我们表明,基于反事实因果影响(CCI)的信息流定义可以保证信息路径的存在,同时也没有孤儿。我们还证明,在所有情况下,没有满足信息路径属性的信息流的观察性定义可以匹配CCI。此外,我们检查的每个定义(包括CCI)都显示了示例,其中信息流可以采取非直觉的路径。然而,我们认为我们的框架比神经科学中使用的经典工具(例如格兰杰因果关系)更适合于给出清晰的解释。本文的完整版本可在线获得[1]。

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