基于语义和相关性方法的堆栈溢出重复问题检测

Zhifang Liao, Wen-Xiong Li, Yan Zhang, Song Yu
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引用次数: 2

摘要

Stack Overflow是一个与编程相关的热门在线问答网站。Stack Overflow虽然有详细的提问指导,但是重复的问题仍然频繁出现,大量的重复问题使得社区的质量下降。为了解决这个问题,Stack Overflow允许声誉较高的用户手动标记重复的问题。然而,这种方法是低效的,并且导致许多重复的问题仍然未被发现。为此,本文提出了一种基于语义和相关性的重复问题检测模型。该模型采用Siamese BiLSTM对问题对进行编码,并通过软对齐注意和推理组合来获取标题和正文的语义交互信息。软词匹配捕获标题中的相关信息。我们在堆栈溢出的六个问题组中评估了该模型的有效性。与最新的深度学习模型相比,我们模型的F1-Score和ACC分别提高了9.401%和8.901%。实验结果表明,该模型的性能优于基准,具有一定的竞争力。
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Detecting Duplicate Questions in Stack Overflow via Semantic and Relevance Approaches
Stack Overflow is a popular online Q&A website related to programming. Although Stack Overflow has detailed questioning guidance, duplicate questions still appear frequently, and a large number of duplicate questions make the quality of the community degraded. To solve this problem, Stack Overflow allows users with high reputations to manually mark duplicate questions. However, this method is inefficient and causes many duplicate questions to remain undiscovered. Therefore, this paper proposes a duplicate questions detection model based on semantic and relevance. The model employs Siamese BiLSTM to encode question pairs and captures the semantic interaction information of title and body through soft align attention and inference composition. The soft term match captures the relevance information in the title. We evaluate the effectiveness of the model in six question groups on Stack Overflow. Compared with the latest deep learning model, the F1-Score and ACC of our model increased by 9.401% and 8.901%, respectively. Experimental results show that our model outperforms the baselines and achieves competitive performance.
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