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Array training in a categorization task

机译:分类任务中的阵列训练

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摘要

Two components of categorization, within-category commonalities and between-category distinctiveness, were investigated in a categorization task. Subjects learned three prototype categories composed of moderately high distortions, by observing arrays containing patterns that belonged either to a common prototype category or to three different categories; a third group learned patterns presented one at a time, mirroring the standard paradigm. Following 6 learning blocks, subjects transferred to old patterns and new patterns at low-, medium-, and high-level distortions of the category prototype. The results showed that array training facilitated learning, especially when patterns in the array belonged to the same category. Transfer results showed a strong gradient effect across pattern distortion level for all conditions, with the highest performance obtained following array training on different category patterns and worst in the control condition. Interestingly, the old training patterns were classified worse than new low and no better than medium distortions. Neither this ordering nor the steepness of the gradient across prototype similarity for each condition could be predicted by the generalized context model. A prototype model better captured the steep gradient and ordinal pattern of results, although the overall fits were only slightly better than the exemplar model. The crucial role played by category commonalities and distinctiveness on categorical representations is addressed.
机译:在分类任务中,研究了分类的两个组成部分:类别内共性和类别间独特性。通过观察包含模式的阵列,受试者学会了由中等高度失真组成的三个原型类别,这些阵列属于一个共同的原型类别或三个不同的类别。第三组学习模式一次呈现一个模式,以反映标准范例。在6个学习块之后,科目在类别原型的低,中和高级失真下转换为旧模式和新模式。结果表明,阵列训练有助于学习,特别是当阵列中的模式属于同一类别时。转移结果显示,在所有条件下,整个模式失真水平上的梯度效果均很强,在不同类别模式下进行阵列训练后,可以获得最高的性能,而在控制条件下则表现最差。有趣的是,旧的训练模式被分类为比新的低失真更差,而没有比中失真更好。广义上下文模型无法预测每种条件下原型相似度上的梯度排序或陡峭程度。尽管整体拟合仅比示例模型好一点,但原型模型可以更好地捕获结果的陡峭梯度和顺序模式。讨论了类别共性和独特性对分类表示形式所起的关键作用。

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