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Diachronic Sense Modeling with Deep Contextualized Word Embeddings: An Ecological View

机译:具有深度上下文化词嵌入的历时感官建模:生态学观点

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Diachronic word embeddings have been widely used in detecting temporal changes. However, existing methods face the meaning conflation deficiency by representing a word as a single vector at each time period. To address this issue, this paper proposes a sense representation and tracking framework based on deep contextualized embeddings, aiming at answering not only what and when, but also how the word meaning changes. The experiments show that our framework is effective in representing fine-grained word senses, and it brings a significant improvement in word change detection task. Furthermore, we model the word change from an ecological viewpoint, and sketch two interesting sense behaviors in the process of language evolution, i.e. sense competition and sense cooperation.
机译:历时性词嵌入已广泛用于检测时间变化。但是,现有方法通过在每个时间段将单词表示为单个向量而面临含义混淆的缺陷。为了解决这个问题,本文提出了一种基于深度上下文嵌入的感知表示和跟踪框架,旨在不仅回答何时何地,而且回答词义如何变化。实验表明,我们的框架有效地表示了细粒度的词义,并在词变检测任务中带来了显着的改进。此外,我们从生态学的角度对词的变化进行建模,并在语言发展的过程中勾勒出两种有趣的感觉行为,即感觉竞争和感觉合作。

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