Hudson Kam Carla L
Department of Psychology, 3210 Tolman Hall, #1650, University of California, Berkeley, Berkeley, CA 94720.
Lang Learn Dev. 2009 Apr 1;5(2):115-145. doi: 10.1080/15475440902739962.
This study examines whether human learners can acquire statistics over abstract categories and their relationships to each other. Adult learners were exposed to miniature artificial languages containing variation in the ordering of the Subject, Object, and Verb constituents. Different orders (e.g. SOV, VSO) occurred in the input with different frequencies, but the occurrence of one order versus another was not predictable. Importantly, the language was constructed such that participants could only match the overall input probabilities if they were tracking statistics over abstract categories, not over individual words. At test, participants reproduced the probabilities present in the input with a high degree of accuracy. Closer examination revealed that learner's were matching the probabilities associated with individual verbs rather than the category as a whole. However, individual nouns had no impact on word orders produced. Thus, participants learned the probabilities of a particular ordering of the abstract grammatical categories Subject and Object associated with each verb. Results suggest that statistical learning mechanisms are capable of tracking relationships between abstract linguistic categories in addition to individual items.
本研究考察人类学习者是否能够掌握抽象范畴及其相互关系的统计规律。成年学习者接触包含主语、宾语和动词成分顺序变化的微型人工语言。不同的顺序(如主宾谓、动主宾)在输入中出现的频率不同,但一种顺序与另一种顺序的出现并无可预测性。重要的是,该语言的构建方式使得参与者只有在追踪抽象范畴而非单个单词的统计规律时,才能匹配整体输入概率。在测试中,参与者高度准确地再现了输入中呈现的概率。进一步检查发现,学习者是在匹配与单个动词相关的概率,而非整个范畴。然而,单个名词对产生的词序没有影响。因此,参与者学习到了与每个动词相关的抽象语法范畴主语和宾语特定排序的概率。结果表明,统计学习机制除了能够追踪单个项目外,还能够追踪抽象语言范畴之间的关系。