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Similarity-Dissimilarity Competition in Disjunctive Classification Tasks

机译:析取分类任务中的相似度/非相似度竞争

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摘要

Typical disjunctive artificial classification tasks require participants to sort stimuli according to rules such as “x likes cars only when black and coupe OR white and SUV.” For categories like this, increasing the salience of the diagnostic dimensions has two simultaneous effects: increasing the distance between members of the same category and increasing the distance between members of opposite categories. Potentially, these two effects respectively hinder and facilitate classification learning, leading to competing predictions for learning. Increasing saliency may lead to members of the same category to be considered less similar, while the members of separate categories might be considered more dissimilar. This implies a similarity-dissimilarity competition between two basic classification processes. When focusing on sub-category similarity, one would expect more difficult classification when members of the same category become less similar (disregarding the increase of between-category dissimilarity); however, the between-category dissimilarity increase predicts a less difficult classification. Our categorization study suggests that participants rely more on using dissimilarities between opposite categories than finding similarities between sub-categories. We connect our results to rule- and exemplar-based classification models. The pattern of influences of within- and between-category similarities are challenging for simple single-process categorization systems based on rules or exemplars. Instead, our results suggest that either these processes should be integrated in a hybrid model, or that category learning operates by forming clusters within each category.
机译:典型的脱节人工分类任务要求参与者根据规则分类刺激,例如“只有在黑色和小轿车或白色和SUV时,x才喜欢汽车。”对于这样的类别,增加诊断维度的显着性具有两个同时的效果:增加相同类别的成员之间的距离和增加相反类别的成员之间的距离。潜在地,这两种影响分别阻碍和促进分类学习,从而导致竞争性的学习预测。显着性增加可能导致同一类别的成员被认为不太相似,而不同类别的成员可能被认为更加不同。这意味着两个基本分类过程之间的相似度/非相似度竞争。当关注子类别的相似性时,人们会期望当同一类别的成员变得不太相似时(而不考虑类别间相似性的增加),分类会更加困难;但是,类别间的相似性增加预示了分类的难度较小。我们的分类研究表明,与寻找子类别之间的相似性相比,参与者更多地依赖于使用相反类别之间的相似性。我们将结果连接到基于规则和基于示例的分类模型。对于基于规则或示例的简单单过程分类系统,类别内和类别间相似性的影响模式具有挑战性。相反,我们的结果表明,要么将这些过程整合到一个混合模型中,要么通过在每个类别内形成集群来进行类别学习。

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