Department of Psychological and Brain Sciences and Program in Cognitive Science, Indiana University, Bloomington, IN 47405, USA.
Psychol Rev. 2012 Jan;119(1):21-39. doi: 10.1037/a0026182.
Both adults and young children possess powerful statistical computation capabilities--they can infer the referent of a word from highly ambiguous contexts involving many words and many referents by aggregating cross-situational statistical information across contexts. This ability has been explained by models of hypothesis testing and by models of associative learning. This article describes a series of simulation studies and analyses designed to understand the different learning mechanisms posited by the 2 classes of models and their relation to each other. Variants of a hypothesis-testing model and a simple or dumb associative mechanism were examined under different specifications of information selection, computation, and decision. Critically, these 3 components of the models interact in complex ways. The models illustrate a fundamental tradeoff between amount of data input and powerful computations: With the selection of more information, dumb associative models can mimic the powerful learning that is accomplished by hypothesis-testing models with fewer data. However, because of the interactions among the component parts of the models, the associative model can mimic various hypothesis-testing models, producing the same learning patterns but through different internal components. The simulations argue for the importance of a compositional approach to human statistical learning: the experimental decomposition of the processes that contribute to statistical learning in human learners and models with the internal components that can be evaluated independently and together.
成人和儿童都具有强大的统计计算能力——他们可以通过跨情境汇总统计信息来从涉及多个词和多个指称的高度歧义语境中推断出词的指称。这种能力已经被假设检验模型和联想学习模型解释过了。本文描述了一系列模拟研究和分析,旨在了解这两类模型所假设的不同学习机制及其相互关系。在不同的信息选择、计算和决策规范下,对假设检验模型和简单或愚蠢的联想机制的变体进行了检查。关键是,这些模型的三个组成部分以复杂的方式相互作用。这些模型说明了数据输入量和强大计算之间的基本权衡:通过选择更多的信息,愚蠢的联想模型可以模仿通过使用较少数据的假设检验模型所完成的强大学习。然而,由于模型组成部分之间的相互作用,联想模型可以模仿各种假设检验模型,产生相同的学习模式,但通过不同的内部组件。这些模拟强调了人类统计学习的组合方法的重要性:对有助于人类学习者和模型中统计学习的过程进行实验分解,这些过程具有可以独立和共同评估的内部组件。