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Computational model for syntactic development: Identifying how children learn to generalize nouns and verbs for different languages

机译:句法发展的计算模型:确定儿童如何学习概括不同语言的名词和动词

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By three years of age, children are supposed to start learning to understand syntactic structures, and at around five years of age, they are reported to be able to infer a syntactic category, such as a noun or a verb, for a novel word. Finding the syntactic cue enables them to infer a target directed by a novel word in visual stimuli. The study also found that their inference performances depended on their native languages. In this article, we propose a model to explain how children learn to generalize novel nouns and verbs in the Japanese, English, and Chinese languages. We use a Bayesian hidden Markov model (BHMM) to learn syntactic categories represented as hidden states in a BHMM. Here, an increase in the number of hidden states indicates the children's syntactic development. A model with a larger number of hidden states is able to infer a clearer syntactic category of a novel word, resulting in the correct choice of a category for the visual target. Syntactic categories that depend on input languages are acquired by BHMMs, and therefore result in different performances among the languages. We entered English-, Japanese-, or Chinese-corpus into the model and examined how the model inferred a correct target indicated by a novel word through the acquired syntactic categories. The results showed that the performances by our model are very similar to the children's performances. Further analysis of representations of hidden states clarified that the model acquires syntactic categories reflecting orders of words in English, suffixes in Japanese, and adverbs in Chinese.
机译:据推测,到三岁时,孩子们将开始学习理解句法结构,据报道,大约五岁时,他们能够推断出一个新颖单词的句法类别,例如名词或动词。找到句法提示使他们能够在视觉刺激中推断出一个由新单词引导的目标。研究还发现,他们的推理表现取决于他们的母语。在本文中,我们提出了一个模型来解释儿童如何学习将日语,英语和汉语中的新颖名词和动词归纳。我们使用贝叶斯隐藏马尔可夫模型(BHMM)来学习表示为BHMM中隐藏状态的句法类别。在这里,隐藏状态数量的增加表明儿童的句法发展。具有大量隐藏状态的模型能够推断出新单词的语法类别更清晰,从而为视觉目标正确选择类别。 BHMM获取依赖于输入语言的语法类别,因此导致这些语言之间的性能差异。我们在模型中输入了英语,日语或中文语料库,并研究了该模型如何通过习得的句法类别推断出由一个新单词表示的正确目标。结果表明,我们的模型的表演与孩子们的表演非常相似。对隐藏状态表示的进一步分析表明,该模型获得了反映英语单词顺序,日语后缀和中文副词的句法类别。

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