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An exploration of semantic relations in neural word embeddings using extrinsic knowledge

机译:利用外在知识探索神经词嵌入中的语义关系

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In the recent few years, neural-network-based word embeddings have been widely used in text mining. However, the dense representations of word embeddings act as a black box and lack interpretability. Even though word embeddings are able to capture semantic regularities in free text documents, it is not clear what kinds of semantic relations can be represented by word embeddings and how semantically-related terms can be retrieved from word embeddings. In this study, we propose a novel approach to explore the semantic relations in neural embeddings using extrinsic knowledge from WordNet and Unified Medical Language System (UMLS). We trained multiple word embeddings using health-related articles in Wikipedia. We then evaluated the performance of the different word embeddings in semantic relation term retrieval tasks. This study shows that word embeddings can group terms with diverse semantic relations together.
机译:在近几年来,基于神经网络的Word Embeddings已广泛用于文本挖掘。然而,Word Embeddings的密集表示充当黑匣子,缺乏可解释性。尽管Word Embeddings能够在免费的文本文档中捕获语义规律,但尚不清楚Word Embeddings可以代表哪种语义关系以及如何从Word Embeddings检索语义相关术语。在这项研究中,我们提出了一种新颖的方法,可以使用来自Wordnet和Unified Medical语言系统(UML)的外在知识来探讨神经嵌入中的语义关系。我们使用维基百科的健康相关文章培训了多个单词嵌入。然后,我们评估了语义关系术语检索任务中不同单词嵌入的性能。这项研究表明,Word Embeddings可以将术语分别与不同的语义关系一起组合在一起。

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