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KDSL: a Knowledge-Driven Supervised Learning Framework for Word Sense Disambiguation

机译:KDSL:一位知识驱动的监督学习框架,用于词感歧义

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We propose KDSL, a new word sense disambiguation (WSD) framework that utilizes knowledge to automatically generate sense-labeled data for supervised learning. First, from WordNet, we automatically construct a semantic knowledge base called DisDict, which provides refined feature words that highlight the differences among word senses, i.e., synsets. Second, we automatically generate new sense-labeled data by DisDict from unlabeled corpora. Third, these generated data, together with manually labeled data and unlabeled data, are fed to a neural framework conducting supervised and unsupervised learning jointly to model the semantic relations among synsets, feature words and their contexts. The experimental results show that KDSL outperforms several representative state-of-the-art methods on various major benchmarks. Interestingly, it performs relatively well even when manually labeled data is unavailable, thus provides a potential solution for similar tasks in a lack of manual annotations.
机译:我们提出了KDSL,一个新的词感歧义(WSD)框架,利用知识自动生成有关监督学习的有义标签数据。首先,来自Wordnet,我们自动构建一个名为DISCICT的语义知识库,它提供了精细的特征词,它突出了单词感官中的差异,即synsets。其次,我们通过拆除未标记的Corpora自动生成新的感觉标记的数据。第三,这些生成的数据与手动标记的数据和未标记的数据一起被馈送到神经框架,共同传导监督和无监督的学习,以模拟合并,特征词及其上下文的语义关系。实验结果表明,KDSL在各种主要基准上表现出几种代表性的方法。有趣的是,即使手动标记的数据不可用,它也表现得相对较好,从而为缺乏手动注释提供类似任务的潜在解决方案。

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