Hélie Sébastien, Shamloo Farzin, Ell Shawn W
Department of Psychological Sciences, Purdue University, West Lafayette, Indiana, United States of America.
Department of Psychology, University of Maine, Orono, Maine, United States of America.
PLoS One. 2017 Aug 28;12(8):e0183904. doi: 10.1371/journal.pone.0183904. eCollection 2017.
Category representations can be broadly classified as containing within-category information or between-category information. Although such representational differences can have a profound impact on decision-making, relatively little is known about the factors contributing to the development and generalizability of different types of category representations. These issues are addressed by investigating the impact of training methodology and category structures using a traditional empirical approach as well as the novel adaptation of computational modeling techniques from the machine learning literature. Experiment 1 focused on rule-based (RB) category structures thought to promote between-category representations. Participants learned two sets of two categories during training and were subsequently tested on a novel categorization problem using the training categories. Classification training resulted in a bias toward between-category representations whereas concept training resulted in a bias toward within-category representations. Experiment 2 focused on information-integration (II) category structures thought to promote within-category representations. With II structures, there was a bias toward within-category representations regardless of training methodology. Furthermore, in both experiments, computational modeling suggests that only within-category representations could support generalization during the test phase. These data suggest that within-category representations may be dominant and more robust for supporting the reconfiguration of current knowledge to support generalization.
类别表征可以大致分为包含类别内信息或类别间信息。尽管这种表征差异会对决策产生深远影响,但对于促成不同类型类别表征的发展和通用性的因素,我们了解得相对较少。通过使用传统实证方法以及对机器学习文献中的计算建模技术进行新颖改编,研究训练方法和类别结构的影响,来解决这些问题。实验1聚焦于被认为能促进类别间表征的基于规则(RB)的类别结构。参与者在训练期间学习了两组两类别的内容,随后使用训练类别对一个新颖的分类问题进行测试。分类训练导致偏向类别间表征,而概念训练导致偏向类别内表征。实验2聚焦于被认为能促进类别内表征的信息整合(II)类别结构。对于II结构,无论训练方法如何,都存在偏向类别内表征的情况。此外,在两个实验中,计算建模表明只有类别内表征能够在测试阶段支持泛化。这些数据表明,类别内表征可能占主导地位,并且在支持重新配置当前知识以支持泛化方面更加强健。