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Learning grammatical categories using paradigmatic representations: Substitute words for language acquisition

机译:使用范式表示法学习语法类别:用单词代替语言习得

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Learning word categories is a fundamental task in language acquisition. Previous studies show that co-occurrence patterns of preceding and following words are essential to group words into categories. However, the neighboring words, or frames, are rarely repeated exactly in the data. This creates data sparsity and hampers learning for frame based models. In this work, we propose a paradigmatic representation of word context which uses probable substitutes instead of frames. Our experiments on child-directed speech show that models based on probable substitutes learn more accurate categories with fewer examples compared to models based on frames.
机译:学习单词类别是语言习得中的一项基本任务。先前的研究表明,前后单词的共现模式对于将单词归类为必不可少的。但是,相邻单词或帧很少在数据中准确重复。这会造成数据稀疏性,并妨碍基于帧的模型的学习。在这项工作中,我们提出了一种用语境替代的形式表示法,它使用可能的替代词代替了框架。我们针对儿童语音的实验表明,与基于框架的模型相比,基于可能替代品的模型学习的类别更准确,示例更少。

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