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Improving the Community Question Retrieval Performance Using Attention-Based Siamese LSTM

机译:使用基于注意力的连体LSTM改进社区问题检索性能

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In this paper, we focus on the problem of question retrieval in community Question Answering (cQA) which aims to retrieve from the community archives the previous questions that are semantically equivalent to the new queries. The major challenges in this crucial task are the shortness of the questions as well as the word mismatch problem as users can formulate the same query using different wording. While numerous attempts have been made to address this problem, most existing methods relied on supervised models which significantly depend on large training data sets and manual feature engineering. Such methods are mostly constrained by their specificities that put aside the word order and ignore syntactic and semantic relationships. In this work, we rely on Neural Networks (NNs) which can learn rich dense representations of text data and enable the prediction of the textual similarity between the community questions. We propose a deep learning approach based on a Siamese architecture with LSTM networks, augmented with an attention mechanism. We test different similarity measures to predict the semantic similarity between the community questions. Experiments conducted on real cQA data sets in English and Arabic show that the performance of question retrieval is improved as compared to other competitive methods.
机译:在本文中,我们关注社区问答中的问题检索问题(cQA),该问题旨在从社区档案中检索语义上等同于新查询的先前问题。这项关键任务的主要挑战是问题的简短性以及单词不匹配问题,因为用户可以使用不同的措词来表述相同的查询。尽管已经进行了许多尝试来解决此问题,但是大多数现有方法都依赖于受监督的模型,该模型在很大程度上依赖于大型训练数据集和手动特征工程。此类方法主要受其特殊性约束,这些特殊性将单词顺序放在一边,而忽略了句法和语义关系。在这项工作中,我们依靠神经网络(NNs)来学习丰富的文本数据密集表示,并能够预测社区问题之间的文本相似性。我们提出了一种基于具有LSTM网络的暹罗架构的深度学习方法,并增加了注意力机制。我们测试不同的相似性度量以预测社区问题之间的语义相似性。在英语和阿拉伯语的真实cQA数据集上进行的实验表明,与其他竞争方法相比,问题检索的性能得到了提高。

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