利用深度学习方法检测堆栈溢出中的重复问题

Liting Wang, Li Zhang, Jing Jiang
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引用次数: 13

摘要

Stack Overflow是一个基于软件编程的热门问答网站。不同的用户经常以不同的方式提出相同的问题,导致Stack Overflow中出现大量重复的问题。一般来说,高信誉用户手工分析和标记重复问题,耗时长,效率低。因此,需要一种自动的重复问题检测方法。我们首先研究了深度学习模型在软件工程任务中的应用。然后,应用CNN、RNN和LSTM三种深度学习模型来验证它们在Stack Overflow中的重复问题检测任务中是否有效。本文在CNN、RNN和LSTM的基础上,探讨了DQ-CNN、DQ-RNN和DQ-LSTM三种深度学习方法来检测重复问题。DQ-CNN、DQ-RNN和DQ-LSTM的有效性通过六个不同的问题组进行评估。实验结果表明,除了Ruby问题组,DQ-LSTM在recall-rate@5、recall-rate@10和recall-rate@20三个方面都优于DupPredictor、Dupe、DupePredictorRep-T和DupeRep。
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Detecting Duplicate Questions in Stack Overflow via Deep Learning Approaches
Stack Overflow is a popular question and answer website based on the software programming. Different users often ask the same questions in different ways, resulting in a large number of duplicate questions in Stack Overflow. Generally, the users with high reputation manually analyze and mark duplicate questions, which is time consuming and low efficiency. Therefore, the automatic duplicate question detection approach is demanded. We first investigate the application of deep learning models to software engineering task. Then, three deep learning models (i.e., CNN, RNN and LSTM) are applied to demonstrate whether they are effective to duplicate question detection task in Stack Overflow. In this paper, we explore three deep learning approaches DQ-CNN, DQ-RNN and DQ-LSTM based on CNN, RNN and LSTM to detect duplicate questions. The effectiveness of DQ-CNN, DQ-RNN and DQ-LSTM is evaluated by six different question groups. The experimental results show that DQ-LSTM outperforms DupPredictor, Dupe, DupePredictorRep-T and DupeRep in terms of recall-rate@5, recall-rate@10 and recall-rate@20 except for Ruby question group.
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