【2h】

Response times from ensembles of accumulators

机译:来自蓄电池组的响应时间

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摘要

Decision-making is explained by psychologists through stochastic accumulator models and by neurophysiologists through the activity of neurons believed to instantiate these models. We investigated an overlooked scaling problem: How does a response time (RT) that can be explained by a single model accumulator arise from numerous, redundant accumulator neurons, each of which individually appears to explain the variability of RT? We explored this scaling problem by developing a unique ensemble model of RT, called e pluribus unum, which embodies the well-known dictum “out of many, one.” We used the e pluribus unum model to analyze the RTs produced by ensembles of redundant, idiosyncratic stochastic accumulators under various termination mechanisms and accumulation rate correlations in computer simulations of ensembles of varying size. We found that predicted RT distributions are largely invariant to ensemble size if the accumulators share at least modestly correlated accumulation rates and RT is not governed by the most extreme accumulators. Under these regimes the termination times of individual accumulators was predictive of ensemble RT. We also found that the threshold measured on individual accumulators, corresponding to the firing rate of neurons measured at RT, can be invariant with RT but is equivalent to the specified model threshold only when the rate correlation is very high.
机译:心理学家通过随机累加器模型解释决策,而神经生理学家通过相信实例化这些模型的神经元活动来解释决策。我们研究了一个被忽视的缩放问题:单个模型累加器可以解释的响应时间(RT)是如何由众多冗余累加器神经元产生的,每个神经元似乎都可以单独解释RT的可变性?我们通过开发一个称为e pluribus unum的RT的独特集成模型来探索此缩放问题,该模型体现了众所周知的格言“多于一个”。我们使用了e pluribus unum模型来分析由冗余,特质随机蓄能器的集合在各种终止机制下以及在不同大小的集合的计算机模拟中的累积速率相关情况下所产生的RT。我们发现,如果累加器共享至少适度相关的累加率并且RT不受最极端的累加器支配,则预测的RT分布在很大程度上取决于集合大小。在这些情况下,单个蓄电池的终止时间可预测整体RT。我们还发现,在各个累加器上测得的阈值与在RT处测得的神经元放电速率相对应,可以随RT不变,但仅当速率相关性非常高时才等于指定的模型阈值。

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