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Extractive Summarization using Continuous Vector Space Models

机译:使用连续向量空间模型的提取摘要

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摘要

Automatic summarization can help users extract the most important pieces of information from the vast amount of text digitized into electronic form everyday. Central to automatic summarization is the notion of similarity between sentences in text. In this paper we propose the use of continuous vector representations for se-mantically aware representations of sentences as a basis for measuring similarity. We evaluate different compositions for sentence representation on a standard dataset using the ROUGE evaluation measures. Our experiments show that the evaluated methods improve the performance of a state-of-the-art summarization framework and strongly indicate the benefits of continuous word vector representations for automatic summarization.
机译:自动摘要可以帮助用户每天从大量数字化为电子形式的文本中提取最重要的信息。自动摘要的核心是文本中句子之间的相似性概念。在本文中,我们建议使用连续向量表示形式来对句子进行语义感知,以此作为衡量相似度的基础。我们使用ROUGE评估方法评估标准数据集上句子表示的不同构成。我们的实验表明,所评估的方法改善了最新的摘要框架的性能,并强烈表明了连续单词向量表示法对于自动摘要的好处。

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