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Change-point detection in neuronal spike train activity

机译:神经元突波训练活动中的变化点检测

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摘要

Animals respond to changes in their environment based on the information encoded in neuronal spike activity. One key issue is to determine how quickly and reliably the system can detect that a behaviorally relevant change has taken place. What are the neural mechanisms and computational principles that allow fast, reliable detection of changes in spike activity? Here we present an optimal statistical signal-processing algorithm for change-point detection, known as the cumulative sum (CUSUM) algorithm. We then show that the performance of a simple neuron model with leaky-integrate-and-fire dynamics can approach theoretically optimal performance limits under certain conditions.
机译:动物根据神经元突波活动中编码的信息来响应其环境的变化。一个关键问题是确定系统可以多快和可靠地检测到行为相关的更改已发生。有哪些神经机制和计算原理可以快速,可靠地检测峰值活动的变化?在这里,我们提出了一种用于变化点检测的最佳统计信号处理算法,称为累积和(CUSUM)算法。然后,我们证明具有泄漏集成和点火动力学的简单神经元模型的性能在某些条件下可以达到理论上的最佳性能极限。

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