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Ignore Similarity If You Can: A Computational Exploration of Exemplar Similarity Effects on Rule Application

机译:如果可以请忽略相似性:对规则应用的示例相似性影响的计算探索

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摘要

It is generally assumed that when making categorization judgments the cognitive system learns to focus on stimuli features that are relevant for making an accurate judgment. This is a key feature of hybrid categorization systems, which selectively weight the use of exemplar- and rule-based processes. In contrast, have shown that people cannot help but pay attention to exemplar similarity, even when doing so leads to classification errors. This paper tests, through a series of computer simulations, whether a hybrid categorization model developed in the ACT-R cognitive architecture (by ) can account for the Hahn et al. dataset. This model implements exemplar-based random walk model as its exemplar route, and combines it with an implementation of rule-based model RULEX. A thorough search of the model’s parameter space showed that while the presence of an exemplar-similarity effect on response times was associated with classification errors it was possible to fit both measures to the observed data for an unsupervised version of the task (i.e., in which no feedback on accuracy was given). Difficulties arose when the model was applied to a supervised version of the task in which explicit feedback on accuracy was given. Modeling results show that the exemplar-similarity effect is diminished by feedback as the model learns to avoid the error-prone exemplar-route, taking instead the accurate rule-route. In contrast to the model, Hahn et al. found that people continue to exhibit robust exemplar-similarity effects even when given feedback. This work highlights a challenge for understanding how and why people combine rules and exemplars when making categorization decisions.
机译:通常假定,在做出分类判断时,认知系统会学习着重于与做出准确判断相关的刺激特征。这是混合分类系统的关键特征,该系统选择性地加权了基于示例和基于规则的过程的使用。相反,已表明人们不禁要注意示例性相似性,即使这样做会导致分类错误。本文通过一系列计算机模拟测试,在ACT-R认知架构中开发的混合分类模型(by)是否可以解释Hahn等人的观点。数据集。该模型将基于示例的随机游走模型作为其示例路线,并将其与基于规则的模型RULEX的实现相结合。对该模型参数空间的彻底搜索显示,尽管对响应时间存在示例相似性影响与分类错误相关联,但对于任务的无监督版本(例如,其中没有提供有关准确性的反馈)。当将模型应用于任务的监督版本时,出现了困难,其中给出了对准确性的明确反馈。建模结果表明,当模型学会避免容易出错的示例路径,而取而代之的是精确的规则路径时,反馈会减少示例相似性效应。与模型相反,Hahn等人。发现即使给予反馈,人们仍会继续表现出强大的示例相似性效应。这项工作凸显了在理解分类决策时人们如何以及为什么将规则和样例结合在一起时的挑战。

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