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Eigenvalue based features for semantic sentence similarity

机译:基于特征的特征,用于语义句子相似性

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Due to its increasing importance, the semantic sentence similarity is getting more attention among natural language processing researchers during recent years. To the best of our knowledge, previous studies on the task have not exploited the eigenvalue analysis on their systems. In this paper we approach the sentence similarity task through eigenvalue analysis. We will propose a simple but efficient new aligner and introduce three new features for the task. Two of our proposed features are based on the eigenvalue analysis. Finally, we will show the significance of our proposed aligner and features through experiments. Specifically, we will show that our features outperform the STS2015 benchmarks for semantic sentence similarity.
机译:由于其重要性越来越重要,语义句子的相似性是在近年来在自然语言处理研究人员中获得更多关注。据我们所知,以前关于该任务的研究没有利用对其系统的特征值分析。在本文中,我们通过特征值分析方法接近句子相似性任务。我们将提出一个简单但有效的新对齐器,并为任务引入三个新功能。我们两个提出的功能基于特征值分析。最后,我们将展示我们提出的对齐和功能通过实验的重要性。具体来说,我们将表明我们的功能胜过了语义句欲的STS2015基准。

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