In recent years it has become clear that the brain maintains a temporal memory of recent events stretching far into the past. This paper presents a neurally-inspired algorithm to use a scale-invariant temporal representation of the past to predict a scale-invariant future. The result is a scale-invariant estimate of future events as a function of the time at which they are expected to occur. The algorithm is time-local, with credit assigned to the present event by observing how it affects the prediction of the future. To illustrate the potential utility of this approach, we test the model on simultaneous renewal processes with different time scales. The algorithm scales well on these problems despite the fact that the number of states needed to describe them as a Markov process grows exponentially.
翻译:近年来,大脑显然保持了对远追溯到过去的最近事件的时间记忆。本文件展示了一种由神经启发的算法,用一个规模变化式时间代表过去来预测一个规模变化中的未来。结果对未来事件进行规模变化性估计,作为预期发生时间的函数。算法是时间性的,通过观察它如何影响对未来的预测,为本次事件分配了信用。为了说明这一方法的潜在效用,我们用不同时间尺度测试了同时更新进程的模型。尽管需要将这些事件描述为马尔科夫进程的国家数量成倍增长,但算法在这些问题上还是十分出色。