Department of Computer Science, University of Toronto Department of Computational Linguistics, Saarland University.
Cogn Sci. 2010 Aug;34(6):1017-63. doi: 10.1111/j.1551-6709.2010.01104.x. Epub 2010 May 13.
Words are the essence of communication: They are the building blocks of any language. Learning the meaning of words is thus one of the most important aspects of language acquisition: Children must first learn words before they can combine them into complex utterances. Many theories have been developed to explain the impressive efficiency of young children in acquiring the vocabulary of their language, as well as the developmental patterns observed in the course of lexical acquisition. A major source of disagreement among the different theories is whether children are equipped with special mechanisms and biases for word learning, or their general cognitive abilities are adequate for the task. We present a novel computational model of early word learning to shed light on the mechanisms that might be at work in this process. The model learns word meanings as probabilistic associations between words and semantic elements, using an incremental and probabilistic learning mechanism, and drawing only on general cognitive abilities. The results presented here demonstrate that much about word meanings can be learned from naturally occurring child-directed utterances (paired with meaning representations), without using any special biases or constraints, and without any explicit developmental changes in the underlying learning mechanism. Furthermore, our model provides explanations for the occasionally contradictory child experimental data, and offers predictions for the behavior of young word learners in novel situations.
它们是任何语言的基础。因此,学习单词的含义是语言习得的最重要方面之一:儿童必须先学习单词,然后才能将它们组合成复杂的语句。许多理论都被提出来解释儿童在获取语言词汇方面令人印象深刻的效率,以及在词汇习得过程中观察到的发展模式。不同理论之间的一个主要分歧来源是儿童是否具备专门的单词学习机制和偏见,或者他们的一般认知能力是否足以胜任这项任务。我们提出了一个新的早期单词学习计算模型,以阐明在这个过程中可能起作用的机制。该模型通过使用增量和概率学习机制,将单词的含义学习为单词和语义元素之间的概率关联,仅依赖于一般认知能力。这里呈现的结果表明,从自然发生的面向儿童的话语(与意义表示配对)中,可以学习到很多关于单词含义的内容,而无需使用任何特殊的偏见或约束,也无需在基础学习机制中进行任何显式的发展变化。此外,我们的模型为偶尔相互矛盾的儿童实验数据提供了解释,并为新情境中年轻单词学习者的行为提供了预测。