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Context induced merging of synonymous word models in computational modeling of early language acquisition

机译:在早期语言习得的计算模型中上下文诱导的同义单词模型的合并

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It has been shown that both infants and machines are able to discover recurring word-like patterns from continuous speech in the absence of supervision. However, these early models for words do not always generalize well across different acoustic variants of the same words. Instead, several parallel models for words or multiple fragments of a word are initially learned. In this work, we study a two-stage computational framework for refining the initially acquired representations of acoustic word patterns. In the first stage, the automatically discovered word patterns are studied in the context of visual word referents, enabling grounding of the word forms to the systematically co-occurring objects and actions in the environment. In the second stage, synonymy of the words is measured in terms of the similarity of their environmental contexts. The word models that share similar external context are merged together, producing a lexicon with a smaller number of parallel models for each word and with a greater generalization capability from each model towards new realizations of the word. The experimental results show that the context-based equivalence and merging of parallel models leads to a more compact and higher quality lexicon than a learning process based purely on acoustic similarities.
机译:已经表明,在没有监督的情况下,婴儿和机器都能够从连续语音中发现反复出现的单词状模式。但是,这些早期的单词模型并不总是能在相同单词的不同声学变体中很好地概括。相反,最初会学习几个单词的并行模型或单词的多个片段。在这项工作中,我们研究了一个两阶段的计算框架,以完善声音单词模式的最初获得的表示形式。在第一阶段,将在视觉单词参考对象的上下文中研究自动发现的单词模式,从而使单词形式能够与环境中系统同时出现的对象和动作相结合。在第二阶段,根据其环境上下文的相似性来衡量单词的同义词。共享相似外部上下文的单词模型将合并在一起,从而生成一个词典,其中每个单词的并行模型数量较少,并且从每个模型到单词的新实现都具有更大的泛化能力。实验结果表明,与仅基于声学相似性的学习过程相比,基于上下文的等效性和并行模型的合并可导致更紧凑和更高质量的词典。

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