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Transfer entropy in continuous time, with applications to jump and neural spiking processes

机译:连续转移熵,具有跳跃和神经尖峰流程的应用

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摘要

Transfer entropy has been used to quantify the directed flow of information between source and target variables in many complex systems. While transfer entropy was originally formulated in discrete time, in this paper we provide a framework for considering transfer entropy in continuous time systems, based on Radon-Nikodym derivatives between measures of complete path realizations. To describe the information dynamics of individual path realizations, we introduce the pathwise transfer entropy, the expectation of which is the transfer entropy accumulated over a finite time interval. We demonstrate that this formalism permits an instantaneous transfer entropy rate. These properties are analogous to the behavior of physical quantities defined along paths such as work and heat.We use this approach to produce an explicit form for the transfer entropy for pure jump processes, and highlight the simplified form in the specific case of point processes (frequently used in neuroscience to model neural spike trains). Finally, we present two synthetic spiking neuron model examples to exhibit the pertinent features of our formalism, namely, that the information flow for point processes consists of discontinuous jump contributions (at spikes in the target) interrupting a continuously varying contribution (relating to waiting times between target spikes). Numerical schemes based on our formalism promise significant benefits over existing strategies based on discrete time formalisms.
机译:转移熵已被用于量化许多复杂系统中的源和目标变量之间的定向信息流。在传输熵最初在离散时间内配制的同时,在本文中,我们提供了一种框架,用于考虑连续时间系统中的转移熵,基于完整路径实现的措施之间的氡-NIKodym衍生物。为了描述单个路径实现的信息动态,我们介绍了PathWise传输熵,其期望是在有限时间间隔中累积的传输熵。我们证明这种形式主义允许瞬时转移熵率。这些属性类似于沿着工作和热量所定义的物理量的行为。我们使用这种方法为纯跳跃过程的转移熵产生明确的形式,并在点过程的特定情况下突出显示简化形式(经常用于神经科学的模型神经钉火车)。最后,我们介绍了两个合成的尖峰神经元模型示例以表现出我们形式主义的相关特征,即点过程的信息流由不连续的跳跃贡献(目标中的尖峰)中断连续不同的贡献(与等待时间有关)在目标尖峰之间)。基于我们的形式主义的数值方案承诺基于离散时间形式主义对现有战略的显着利益。

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