Department of Psychology, University of California, CA, USA.
Cogn Sci. 2012 Jan-Feb;36(1):150-62. doi: 10.1111/j.1551-6709.2011.01204.x. Epub 2011 Oct 4.
Exploring how people represent natural categories is a key step toward developing a better understanding of how people learn, form memories, and make decisions. Much research on categorization has focused on artificial categories that are created in the laboratory, since studying natural categories defined on high-dimensional stimuli such as images is methodologically challenging. Recent work has produced methods for identifying these representations from observed behavior, such as reverse correlation (RC). We compare RC against an alternative method for inferring the structure of natural categories called Markov chain Monte Carlo with People (MCMCP). Based on an algorithm used in computer science and statistics, MCMCP provides a way to sample from the set of stimuli associated with a natural category. We apply MCMCP and RC to the problem of recovering natural categories that correspond to two kinds of facial affect (happy and sad) from realistic images of faces. Our results show that MCMCP requires fewer trials to obtain a higher quality estimate of people's mental representations of these two categories.
探索人们如何表示自然类别是深入了解人们如何学习、形成记忆和做出决策的关键步骤。许多关于分类的研究都集中在实验室中创建的人为类别上,因为研究高维刺激(如图像)上定义的自然类别在方法上具有挑战性。最近的工作已经产生了从观察到的行为中识别这些表示的方法,例如反向相关(RC)。我们将 RC 与另一种用于推断自然类别的结构的替代方法进行了比较,称为具有人的马尔可夫链蒙特卡罗(MCMCP)。基于计算机科学和统计学中使用的算法,MCMCP 提供了一种从与自然类别相关的刺激集抽样的方法。我们将 MCMCP 和 RC 应用于从面部的现实图像中恢复对应于两种面部情感(快乐和悲伤)的自然类别的问题。我们的结果表明,MCMCP 需要更少的试验来获得这两个类别的人心理表示的更高质量估计。