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Conceptual Sentence Embeddings

机译:概念句嵌入

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摘要

Most sentence embedding models typically represent each sentence only using word surface, which makes these models indiscriminative for ubiquitous homonymy and polysemy. In order to enhance discriminativeness, we employ concept conceptualization model to assign associated concepts for each sentence in the text corpus, and learn conceptual sentence embedding (CSE). Hence, the sentence representations are more expressive than some widely-used document representation models such as latent topic models, especially for short text. In the experiments, we evaluate the CSE models on two tasks, text classification and information retrieval. The experimental results show that the proposed models outperform typical sentence embedding models.
机译:大多数句子嵌入模型通常仅使用单词表面表示每个句子,这使得这些模型对于普遍存在的同音异义和多义同义是不加区别的。为了增强判别力,我们采用概念概念化模型为文本语料库中的每个句子分配关联的概念,并学习概念句子嵌入(CSE)。因此,句子表示比某些广泛使用的文档表示模型(例如潜在主题模型)更具表达力,尤其是对于短文本而言。在实验中,我们在两个任务(文本分类和信息检索)上评估了CSE模型。实验结果表明,所提出的模型优于典型的句子嵌入模型。

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