将语法添加到动态规划中,以对齐可比较的文本以生成释义

Siwei Shen, Dragomir R. Radev, Agam Patel, Günes Erkan
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引用次数: 27

摘要

多序列比对技术最近在自然语言社区中得到了普及,特别是在机器翻译、文本生成和释义识别等任务中。根据使用的输入类型,先前的工作分为两类:(a)平行语料库(例如,同一文本的多个翻译)或(b)可比文本(非平行但在同一主题上)。到目前为止,只有基于平行文本的技术成功地使用了语法信息来指导对齐。在本文中,我们描述了一种在非平行文本对齐过程中结合句法特征的算法,目的是生成现有文本的新释义。该方法采用基于两句局部语法相似度的动态规划对齐决策。我们的研究结果表明,当对由对齐诱导的有限状态自动机生成的新句子进行计算时,句法对齐在语法性和保真度上都比无语法方法高出20%。
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Adding Syntax to Dynamic Programming for Aligning Comparable Texts for the Generation of Paraphrases
Multiple sequence alignment techniques have recently gained popularity in the Natural Language community, especially for tasks such as machine translation, text generation, and paraphrase identification. Prior work falls into two categories, depending on the type of input used: (a) parallel corpora (e.g., multiple translations of the same text) or (b) comparable texts (non-parallel but on the same topic). So far, only techniques based on parallel texts have successfully used syntactic information to guide alignments. In this paper, we describe an algorithm for incorporating syntactic features in the alignment process for non-parallel texts with the goal of generating novel paraphrases of existing texts. Our method uses dynamic programming with alignment decision based on the local syntactic similarity between two sentences. Our results show that syntactic alignment outrivals syntax-free methods by 20% in both grammaticality and fidelity when computed over the novel sentences generated by alignment-induced finite state automata.
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