基于深度语境化词表示的无监督句子相似度增强方法

Tharindu Ranasinghe, Constantin Orasan, R. Mitkov
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引用次数: 13

摘要

语义文本相似度的计算在问答、文档摘要、信息检索和信息抽取等应用中起着重要的作用。所有现代最先进的STS方法都以这样或那样的方式依赖于词嵌入。在许多自然语言处理任务中,最近引入的语境化词嵌入被证明比标准词嵌入更有效。本文评估了几种情境化词嵌入对无监督STS方法的影响,并将其与现有的针对不同语言和不同领域的不同数据集的有监督/无监督STS方法进行了比较
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Enhancing Unsupervised Sentence Similarity Methods with Deep Contextualised Word Representations
Calculating Semantic Textual Similarity (STS) plays a significant role in many applications such as question answering, document summarisation, information retrieval and information extraction. All modern state of the art STS methods rely on word embeddings one way or another. The recently introduced contextualised word embeddings have proved more effective than standard word embeddings in many natural language processing tasks. This paper evaluates the impact of several contextualised word embeddings on unsupervised STS methods and compares it with the existing supervised/unsupervised STS methods for different datasets in different languages and different domains
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