Computational Cognitive models of Categorization: Predictions under Conditions of Classification Uncertainty

Nicolás Marchant, Sergio E. Chaigneau
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引用次数: 1

Abstract

In the category learning literature, similarity models have monopolized a good deal of research. The prototype and exemplar models are both based on the idea that people represent the structure of categories and category instances in the physical world in a mental similarity space. However, evidence for these models comes mainly from paradigms that provide subjects with deterministic feedback (i.e., exemplars belong to their corresponding categories with probability = 1). There is evidence that results obtained with deterministic feedback paradigms may not generalize well under probabilistic feedback conditions (i.e., where exemplars belong to their corresponding categories with probability less than 1). In this current work, we also suggest that probabilistic feedback may better reflect natural conditions, which is another important reason to pursue probabilistic feedback research. Thus, in the current work we set up a category learning experiment with probabilistic feedback and use it to evaluate different models. In addition to the two similarity models discussed above, we also use an associationist model that does not rely on the similarity construct. To compare our three models, we rely on computational modeling, which is a standard way of model comparison in cognitive psychology. Our results show that our associationist model outperforms similarity models on all our model evaluation measures. After presenting our results, we discuss why the similarity-based models fail, and also suggest some future lines of research that are possible using probabilistic feedback procedures.
分类的计算认知模型:分类不确定性条件下的预测
在类别学习的文献中,相似模型垄断了大量的研究。原型模型和范例模型都是基于人们在心理相似空间中表示物理世界中类别和类别实例的结构的观点。然而,这些模型的证据主要来自为受试者提供确定性反馈的范式(即,样本属于其相应类别的概率为1)。有证据表明,在概率反馈条件下(即,样本属于其相应类别的概率小于1),确定性反馈范式获得的结果可能无法很好地推广。我们还认为,概率反馈可以更好地反映自然条件,这是进行概率反馈研究的另一个重要原因。因此,在目前的工作中,我们建立了一个带有概率反馈的类别学习实验,并使用它来评估不同的模型。除了上面讨论的两个相似性模型,我们还使用不依赖于相似性构造的关联主义模型。为了比较我们的三个模型,我们依靠计算建模,这是认知心理学中模型比较的标准方法。我们的结果表明,我们的关联主义模型优于相似性模型在所有我们的模型评价措施。在展示了我们的结果之后,我们讨论了基于相似性的模型失败的原因,并提出了一些可能使用概率反馈程序的未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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