University of California, 3210 Tolman Hall #1650, Berkeley, CA 94720-1650, USA.
Psychon Bull Rev. 2010 Aug;17(4):443-64. doi: 10.3758/PBR.17.4.443.
Probabilistic models have recently received much attention as accounts of human cognition. However, most research in which probabilistic models have been used has been focused on formulating the abstract problems behind cognitive tasks and their optimal solutions, rather than on mechanisms that could implement these solutions. Exemplar models are a successful class of psychological process models in which an inventory of stored examples is used to solve problems such as identification, categorization, and function learning. We show that exemplar models can be used to perform a sophisticated form of Monte Carlo approximation known as importance sampling and thus provide a way to perform approximate Bayesian inference. Simulations of Bayesian inference in speech perception, generalization along a single dimension, making predictions about everyday events, concept learning, and reconstruction from memory show that exemplar models can often account for human performance with only a few exemplars, for both simple and relatively complex prior distributions. These results suggest that exemplar models provide a possible mechanism for implementing at least some forms of Bayesian inference.
概率模型最近作为人类认知的解释受到了广泛关注。然而,大多数使用概率模型的研究都集中在制定认知任务背后的抽象问题及其最佳解决方案上,而不是在能够实现这些解决方案的机制上。范例模型是一类成功的心理过程模型,其中使用存储的范例库存来解决识别、分类和功能学习等问题。我们表明,范例模型可以用于执行一种复杂的蒙特卡罗近似方法,称为重要性采样,从而提供了一种进行近似贝叶斯推断的方法。在语音感知、单一维度上的泛化、对日常事件的预测、概念学习和从记忆中重建的贝叶斯推断模拟中,范例模型通常可以仅使用几个范例来解释人类的表现,无论是简单的还是相对复杂的先验分布。这些结果表明,范例模型为实现至少某些形式的贝叶斯推理提供了一种可能的机制。