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The Bayesian Reader: Explaining Word Recognition as an Optimal Bayesian Decision Process

机译:贝叶斯阅读器:将单词识别解释为最佳贝叶斯决策过程

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摘要

This article presents a theory of visual word recognition that assumes that, in the tasks of word identification, lexical decision, and semantic categorization, human readers behave as optimal Bayesian decision makers. This leads to the development of a computational model of word recognition, the Bayesian reader. The Bayesian reader successfully simulates some of the most significant data on human reading. The model accounts for the nature of the function relating word frequency to reaction time and identification threshold, the effects of neighborhood density and its interaction with frequency, and the variation in the pattern of neighborhood density effects seen in different experimental tasks. Both the general behavior of the model and the way the model predicts different patterns of results in different tasks follow entirely from the assumption that human readers approximate optimal Bayesian decision makers.
机译:本文提出了一种视觉单词识别理论,该理论假设在单词识别,词汇决策和语义分类的任务中,人类读者表现为最佳的贝叶斯决策者。这导致了单词识别的计算模型贝叶斯阅读器的发展。贝叶斯阅读器成功地模拟了一些有关人类阅读的最重要数据。该模型考虑了将单词频率与反应时间和识别阈值相关联的函数的性质,邻域密度的影响及其与频率的交互作用以及在不同实验任务中看到的邻域密度效应模式的变化。该模型的一般行为以及该模型预测不同任务中结果的不同模式的方式,完全取决于人类读者近似最佳贝叶斯决策者的假设。

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