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Improving interpretability of word embeddings by generating definition and usage

机译:通过生成定义和用法来提高单词嵌入的可解释性

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摘要

Word embeddings are substantially successful in capturing semantic relations among words. However, these lexical semantics are difficult to be interpreted. Definition modeling provides a more intuitive way to evaluate embeddings by utilizing them to generate natural language definitions of corresponding words. This task is of great significance for practical application and in-depth understanding of word representations. We propose a novel framework for definition modeling, which can generate reasonable and understandable context-dependent definitions. Moreover, we introduce usage modeling and study whether it is possible to utilize embeddings to generate example sentences of words. These ways are a more direct and explicit expression of embedding's semantics for better interpretability. We extend the single task model to multi-task setting and investigate several joint multi-task models to combine usage modeling and definition modeling together. Experimental results on existing Oxford dataset and a new collected Oxford-2019 dataset show that our single-task model achieves the state-of-the-art result in definition modeling and the multi-task learning methods are helpful for two tasks to improve the performance. (c) 2020 Elsevier Ltd. All rights reserved.
机译:Word Embeddings在捕获词语之间的语义关系中基本上是成功的。但是,这些词汇语义很难被解释。定义建模通过利用它们生成对应词的自然语言定义来提供更直观的方式来评估嵌入式。这项任务对于实际应用以及对词语表示的深入了解具有重要意义。我们提出了一种用于定义建模的新框架,可以生成合理和可理解的上下文相关定义。此外,我们引入使用建模和研究是否有可能利用嵌入来生成单词的示例句子。这些方式是更直接和明确的嵌入语义表达,以获得更好的解释性。我们将单个任务模型扩展到多任务设置,并调查多个联合多任务模型以将使用建模和定义建模组合在一起。现有牛津数据集的实验结果和新的收集的牛津-2019数据集表明,我们的单任务模型实现了定义建模的最先进的结果,多任务学习方法有助于两个任务来提高性能。 (c)2020 elestvier有限公司保留所有权利。

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