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Identifying Irrelevant Answers in Web Based Question Answering Systems

机译:在基于Web的问题应答系统中识别无关答案

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Answer re-ranking and quality tagging are two major techniques used to address irrelevant answers in web-based community question answering systems (CQA). However, answer re-ranking is memory inefficient, and quality tagging lacks the ability to predict partially relevant responses. The reported precisions of both mechanisms are also low. Those facts emphasize the importance of finding alternative techniques for identifying irrelevant answers. In this paper, we have analyzed the capability of three widely popular deep learning models (CNN, LSTM and CLSTM) in the NLP literature to identify irrelevant answers in factoid and non-factoid systems. Further, we studied the ability of the same deep learning models to detect partially relevant answers in non-factoid systems. According to the results, the CLSTM model performed over CNN and LSTM in detecting irrelevant answers.
机译:回答重新排名和质量标记是用于解决基于Web的社区问题应答系统(CQA)中的无关答案的两种主要技术。然而,回答重新排名是内存效率低下,质量标记缺乏预测部分相关响应的能力。报告的两种机制的精确度也很低。这些事实强调了寻找识别无关答案的替代技术的重要性。在本文中,我们已经分析了NLP文献中三种广泛流行的深度学习模型(CNN,LSTM和CLSTM)的能力,以确定事实和非事实系统中的无关答案。此外,我们研究了相同的深度学习模型的能力,以检测非因子系统中的部分相关答案。根据结果​​,CLSTM模型在检测不相关的答案时进行了CNN和LSTM。

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