探索语义问题匹配中的深度学习

Ashwin Dhakal, Arpan Poudel, S. Pandey, S. Gaire, Hari Prasad Baral
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引用次数: 8

摘要

问题重复是Quora、Stack-overflow、Reddit等问答论坛遇到的主要问题。由于这些论坛中问题的冗余性,相同问题的不同版本的答案变得支离破碎。最终,这会导致缺乏合理的搜索、回答疲劳、信息隔离以及对提问者缺乏回应。可以使用机器学习和自然语言处理来检测重复问题。Quora提供的40多万对问题数据集通过标记化、词法化和去除停止词进行预处理。该预处理数据集用于特征提取。然后设计人工神经网络,提取特征,拟合到模型中。该神经网络的准确率为86.09%。简而言之,该研究预测问题对之间的语义重合,提取出高度优势的特征,从而确定问题重复的概率。
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Exploring Deep Learning in Semantic Question Matching
Question duplication is the major problem encountered by Q &A forums like Quora, Stack-overflow, Reddit, etc. Answers get fragmented across different versions of the same question due to the redundancy of questions in these forums. Eventually, this results in lack of a sensible search, answer fatigue, segregation of information and the paucity of response to the questioners. The duplicate questions can be detected using Machine Learning and Natural Language Processing. Dataset of more than 400,000 questions pairs provided by Quora are preprocessed through tokenization, lemmatization and removal of stop words. This pre-processed dataset is used for the feature extraction. Artificial Neural Network is then designed and the features hence extracted, are fit into the model. This neural network gives accuracy of 86.09%. In a nutshell, this research predicts the semantic coincidence between the question pairs extracting highly dominant features and hence, determine the probability of question being duplicate.
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