Shen Jianhong, Palmeri Thomas J
Vanderbilt University.
Vis cogn. 2016;24(3):260-283. doi: 10.1080/13506285.2016.1236053. Epub 2016 Nov 10.
Recent years has seen growing interest in understanding, characterizing, and explaining individual differences in visual cognition. We focus here on individual differences in visual categorization. Categorization is the fundamental visual ability to group different objects together as the same kind of thing. Research on visual categorization and category learning has been significantly informed by computational modeling, so our review will focus both on how formal models of visual categorization have captured individual differences and how individual difference have informed the development of formal models. We first examine the potential sources of individual differences in leading models of visual categorization, providing a brief review of a range of different models. We then describe several examples of how computational models have captured individual differences in visual categorization. This review also provides a bit of an historical perspective, starting with models that predicted no individual differences, to those that captured group differences, to those that predict true individual differences, and to more recent hierarchical approaches that can simultaneously capture both group and individual differences in visual categorization. Via this selective review, we see how considerations of individual differences can lead to important theoretical insights into how people visually categorize objects in the world around them. We also consider new directions for work examining individual differences in visual categorization.
近年来,人们对理解、刻画和解释视觉认知中的个体差异越来越感兴趣。我们在此聚焦于视觉分类中的个体差异。分类是一种基本的视觉能力,即将不同的物体归为同一类事物。视觉分类和类别学习的研究在很大程度上受到了计算建模的影响,因此我们的综述将既关注视觉分类的形式模型如何捕捉个体差异,也关注个体差异如何为形式模型的发展提供信息。我们首先考察视觉分类主要模型中个体差异的潜在来源,简要回顾一系列不同的模型。然后我们描述计算模型捕捉视觉分类中个体差异的几个例子。本综述还提供了一些历史视角,从预测无个体差异的模型,到捕捉群体差异的模型,再到预测真正个体差异的模型,以及到能同时捕捉视觉分类中群体和个体差异的更新的层次方法。通过这种选择性综述,我们看到对个体差异的考量如何能带来关于人们如何对周围世界中的物体进行视觉分类的重要理论见解。我们还考虑了研究视觉分类中个体差异的新的工作方向。