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Phrasal Paraphrase Based Question Reformulation for Archived Question Retrieval

机译:基于短语短语的问题重构用于归档问题的检索

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摘要

Lexical gap in cQA search, resulted by the variability of languages, has been recognized as an important and widespread phenomenon. To address the problem, this paper presents a question reformulation scheme to enhance the question retrieval model by fully exploring the intelligence of paraphrase in phrase-level. It compensates for the existing paraphrasing research in a suitable granularity, which either falls into fine-grained lexical-level or coarse-grained sentence-level. Given a question in natural language, our scheme first detects the involved key-phrases by jointly integrating the corpus-dependent knowledge and question-aware cues. Next, it automatically extracts the paraphrases for each identified key-phrase utilizing multiple online translation engines, and then selects the most relevant reformulations from a large group of question rewrites, which is formed by full permutation and combination of the generated paraphrases. Extensive evaluations on a real world data set demonstrate that our model is able to characterize the complex questions and achieves promising performance as compared to the state-of-the-art methods.
机译:由于语言的可变性而导致的cQA搜索中的词汇空缺已被认为是一种重要且普遍的现象。为了解决这个问题,本文提出了一个问题重构方案,通过在短语级别上全面探讨复述的智能来增强问题检索模型。它以适当的粒度补偿了现有的释义研究,可以分为细粒度的词汇级别或粗粒度的句子级别。给定自然语言中的问题,我们的方案首先通过结合集成语料库相关知识和问题意识线索来检测所涉及的关键短语。接下来,它会使用多个在线翻译引擎自动为每个已识别的关键短语提取短语,然后从一大堆问题重写中选择最相关的重构,这些问题重写是由生成的短语的完整排列和组合形成的。对现实世界数据集的广泛评估表明,与最新方法相比,我们的模型能够表征复杂的问题并获得有希望的性能。

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