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Inferring Elapsed Time from Stochastic Neural Processes

机译:从随机神经过程推断经过的时间

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Many perceptual processes and neural computations, such as speech recognition, motor control and learning, depend on the ability to measure and mark the passage of time. However, the processes that make such temporal judgements possible are unknown. A number of different hypothetical mechanisms have been advanced, all of which depend on the known, temporally predictable evolution of a neural or psychological state, possibly through oscillations or the gradual decay of a memory trace. Alternatively, judgements of elapsed time might be based on observations of temporally structured, but stochastic processes. Such processes need not be specific to the sense of time; typical neural and sensory processes contain at least some statistical structure across a range of time scales. Here, we investigate the statistical properties of an estimator of elapsed time which is based on a simple family of stochastic process.
机译:许多感知过程和神经计算,例如语音识别,运动控制和学习,都取决于测量和标记时间流逝的能力。但是,使这种时间判断成为可能的过程是未知的。已经提出了许多不同的假设机制,所有这些都取决于神经或心理状态的已知的,在时间上可预测的演变,可能是通过记忆轨迹的振荡或逐渐衰减来实现的。或者,对经过时间的判断可能基于对时间结构化但随机过程的观察。这样的过程不必特定于时间感。典型的神经和感觉过程在一定的时间范围内至少包含一些统计结构。在这里,我们研究了基于简单的随机过程族的经过时间估计量的统计特性。

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