Barcelona Graduate School of Economics, Barcelona School of Management, Universitat Pompeu Fabra, Barcelona, Spain.
University of Southern Denmark, Odense, Denmark.
Psychon Bull Rev. 2018 Oct;25(5):1666-1681. doi: 10.3758/s13423-017-1372-y.
A key function of categories is to help predictions about unobserved features of objects. At the same time, humans are often in situations where the categories of the objects they perceive are uncertain. In an influential paper, Anderson (Psychological Review, 98(3), 409-429, 1991) proposed a rational model for feature inferences with uncertain categorization. A crucial feature of this model is the conditional independence assumption-it assumes that the within category feature correlation is zero. In prior research, this model has been found to provide a poor fit to participants' inferences. This evidence is restricted to task environments inconsistent with the conditional independence assumption. Currently available evidence thus provides little information about how this model would fit participants' inferences in a setting with conditional independence. In four experiments based on a novel paradigm and one experiment based on an existing paradigm, we assess the performance of Anderson's model under conditional independence. We find that this model predicts participants' inferences better than competing models. One model assumes that inferences are based on just the most likely category. The second model is insensitive to categories but sensitive to overall feature correlation. The performance of Anderson's model is evidence that inferences were influenced not only by the more likely category but also by the other candidate category. Our findings suggest that a version of Anderson's model which relaxes the conditional independence assumption will likely perform well in environments characterized by within-category feature correlation.
类别(category)的一个关键功能是帮助预测未观察到的对象特征。与此同时,人类经常处于感知对象的类别不确定的情况。在一篇有影响力的论文中,安德森(Anderson)(《心理学评论》,98(3),409-429,1991)提出了一个用于不确定分类特征推断的理性模型。该模型的一个关键特征是条件独立假设(conditional independence assumption)——它假设类别内特征相关性为零。在先前的研究中,发现该模型对参与者推断的拟合度较差。这些证据仅限于与条件独立假设不一致的任务环境。目前的可用证据几乎没有提供有关在具有条件独立性的环境中该模型如何拟合参与者推断的信息。在基于一个新的范例的四个实验和一个基于现有范例的实验中,我们评估了安德森模型在条件独立性下的表现。我们发现,该模型比竞争模型更能预测参与者的推断。一个模型假设推断仅基于最可能的类别。第二个模型对类别不敏感,但对整体特征相关性敏感。安德森模型的表现表明,推断不仅受到更可能类别的影响,还受到其他候选类别的影响。我们的研究结果表明,放松条件独立性假设的安德森模型的一个版本很可能在特征相关性较强的环境中表现良好。