A Study of Answer Selection Task Based on Deep Learning Methods

Na Wang, Ruoyan Chen, Kunming Du
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Abstract

Answer selection task is an important task in question answering systems. In this work, we propose several deep learning methods to address answer selection task. Current answer selection tasks use LSTM networks to learn the contextual information of query and candidate answer sequences, but the LSTM network suffers from the problem of gradient instability and fail to extract local information. Aiming to solve these problems, we first introduce fusion layer with residual ideas to alleviate gradient instability. Then we further introduce CNN networks to capture local n-gram information. In addition, we introduce one-way and two-way attention mechanism respectively, in order to capture the interaction between query and candidate answer, and further improve model performance. Experimental results of two public datasets InsuranceQA and WikiQA show that our methods outperform baseline methods, which conclude the effectiveness of our methods proposed.
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基于深度学习方法的答案选择任务研究
选择答案任务是问答系统中的一个重要任务。在这项工作中,我们提出了几种深度学习方法来解决答案选择任务。当前的答案选择任务使用LSTM网络来学习查询和候选答案序列的上下文信息,但LSTM网络存在梯度不稳定的问题,无法提取局部信息。针对这些问题,我们首先引入残差融合层来缓解梯度不稳定性。然后,我们进一步引入CNN网络来捕获局部n-gram信息。此外,我们分别引入了单向和双向关注机制,以捕获查询和候选答案之间的交互,进一步提高模型性能。在两个公共数据集InsuranceQA和WikiQA上的实验结果表明,我们的方法优于基线方法,表明我们的方法是有效的。
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