首页> 外文期刊>Journal of experimental psychology. human perception and performance >Speeded classification in a probabilistic category structure: Contrasting exemplar-retrieval, decision-boundary, and prototype models
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Speeded classification in a probabilistic category structure: Contrasting exemplar-retrieval, decision-boundary, and prototype models

机译:概率类别结构中的快速分类:对比示例检索,决策边界和原型模型

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摘要

Speeded perceptual classification experiments were conducted to distinguish among the predictions of exemplar-retrieval, decision-boundary, and prototype models. The key manipulation was that across conditions, individual stimuli received either probabilistic or deterministic category feedback. Regardless of the probabilistic feedback, however, an ideal observer would always classify the stimuli by using an identical linear decision boundary. Subjects classified the probabilistic stimuli with lower accuracy and longer response times than they classified the deterministic stimuli. These results are in accord with the predictions of the exemplar model and challenge the predictions of the prototype and decision-boundary models.
机译:进行了快速的感知分类实验,以区分示例性检索,决策边界和原型模型的预测。关键的操作是,在各种情况下,单个刺激都会收到概率或确定性类别反馈。但是,无论概率反馈如何,理想的观察者都将始终使用相同的线性决策边界对刺激进行分类。与对确定性刺激进行分类相比,受试者对概率性刺激的分类具有较低的准确性和更长的响应时间。这些结果符合示例模型的预测,并挑战了原型和决策边界模型的预测。

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