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Investigating Word Meta-Embeddings by Disentangling Common and Individual Information

机译:通过解开普通和个人信息来调查词汇嵌入式

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摘要

In the field of natural language processing, combining multiple pre-trained word embeddings has become a viable approach to improve word representations. However, there is still a lack of understanding of why such improvements can be achieved. In this paper, we investigate this issue by firstly proposing a novel word meta-embedding method. The proposed method tends to disentangle common and individual information from different word embeddings and learns representations for both. Based on the proposed method, we then carry out a systematic evaluation to provide a perspective on how common and individual information contributes to different tasks. Our intrinsic evaluation results suggest that common information is critical for word-level representations in terms of word similarity and relatedness. While, based on natural language inference, our extrinsic evaluation results show that common and individual information plays different roles and can complement each other. Further, both intrinsic and extrinsic evaluations reveal that explicitly separating common and individual information is beneficial for learning word meta-embeddings.
机译:在自然语言处理领域,组合多个预先训练的单词嵌入物已成为改进文字表示的可行方法。但是,仍然缺乏了解为什么可以实现这种改进。在本文中,我们首先提出新的词汇嵌入方法来调查这个问题。该方法倾向于解散来自不同词嵌入的共同和个人信息,并为两者学习表示。基于所提出的方法,我们进行了系统评估,以提供关于如何融入不同任务的常见和个人信息的看法。我们的内在评估结果表明,在单词相似性和相关性方面,共同信息对于字样表示至关重要。虽然基于自然语言推断,但我们的外在评估结果表明,普通和个人信息扮演不同的角色,可以相互补充。此外,内在和外在评估都揭示了明确分离的共同和个人信息是有益于学习词汇嵌入的。

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