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A hierarchical Bayesian approach to distinguishing serial and parallel processing

机译:区分串行和并行处理的分层贝叶斯方法

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摘要

Research in cognitive psychology often focuses on how people deal with multiple sources of information. One important aspect of this research is whether people use the information in parallel (at the same time) or in series (one at a time). Various approaches to distinguishing parallel and serial processing have been proposed, but many do not satisfactorily address the mimicking dilemma between serial and parallel classes of models. The mean interaction contrast (MIC) is one measure designed to improve discriminability of serial-parallel model properties. The MIC has been applied in limited settings because the measure required a large number of trials and lacked a mechanism for group level inferences. We address these shortcomings by using hierarchical Bayesian analyses. The combination of the MIC with hierarchical Bayesian modeling gives a powerful method for distinguishing serial and parallel processing at both individual and group levels, even with a limited number of participants and trials. (C) 2017 Elsevier Inc. All rights reserved.
机译:认知心理学的研究往往侧重于人们如何应对多种信息来源。本研究的一个重要方面是人们是否使用并行(同时)或串联(一次)使用该信息。已经提出了区分平行和串行处理的各种方法,但许多人不令人满意地解决了串行和平行类别的模型之间的模拟困境。平均相互作用对比度(MIC)是旨在提高串行平行模型特性的可分解性的一种措施。 MIC已在有限的环境中应用,因为措施需要大量试验,并且缺乏组级推论的机制。我们通过使用等级贝叶斯分析来解决这些缺点。 MIC与分层贝叶斯建模的组合给出了一种强大的方法,用于区分个人和分组水平的串行和并行处理,即使有有限数量的参与者和试验。 (c)2017年Elsevier Inc.保留所有权利。

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