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Acquiring and Processing Verb Argument Structure: Distributional Learning in a Miniature Language

机译:获取和处理动词参数结构:微型语言中的分布式学习

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摘要

Adult knowledge of a language involves correctly balancing lexically-based and more language-general patterns. For example, verb-argument structures may sometimes readily generalize to new verbs, yet with particular verbs may resist generalization. From the perspective of acquisition, this creates significant learnability problems (), with some researchers claiming a crucial role for verb semantics in the determination of when generalization may and may not occur (). Similarly, there has been debate regarding how verb-specific and more generalized constraints interact in sentence processing (; ) and on the role of semantics in this process (). The current work explores these issues using artificial language learning. In three experiments using languages without semantic cues to verb distribution, we demonstrate that learners can acquire both verb-specific and verb-general patterns, based on distributional information in the linguistic input regarding each of the verbs as well as across the language as a whole. As with natural languages, these factors are shown to affect production, judgments and real-time processing. We demonstrate that learners apply a rational procedure in determining their usage of these different input-statistics and conclude by suggesting that a Bayesian perspective on statistical learning may be an appropriate framework for capturing our findings.
机译:成人的语言知识涉及正确地平衡基于词汇的模式和更多的语言通用模式。例如,动词-自变量结构有时可以很容易地泛化为新的动词,而特定动词可能会阻止泛化。从习得的角度来看,这会造成严重的学习性问题(),一些研究人员声称动词语义在确定何时可能发生和不发生泛化方面起着至关重要的作用()。同样,关于动词特定和更笼统的约束在句子处理中如何相互作用(以及)以及语义在此过程中的作用也一直存在争议。当前的工作使用人工语言学习探索了这些问题。在使用没有语义提示的语言进行动词分布的三个实验中,我们证明了学习者可以基于关于每个动词的语言输入以及整个语言的分布信息来获取动词特定模式和动词一般模式。与自然语言一样,这些因素也会影响生产,判断和实时处理。我们证明学习者在确定他们对这些不同输入统计数据的用法时采用了合理的程序,并通过暗示贝叶斯统计学习观点可能是捕获我们的发现的合适框架而得出结论。

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