Using Deconvolutional Variational Autoencoder for Answer Selection in Community Question Answering

Golshan Assadat Afzali Boroujeni, Heshaam Faili
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Abstract

Answer selection in community question answering is a challenging task in natural language processing. The main problem is that there is no evaluation for the answers given by the users and one should go through all possible answers for assessing them, which is exhausting and time consuming. In this paper $w\text{e}$ propose a latent-variable model for learning the representations of the question and answer, by jointly optimizing generative and discriminative objectives. This model uses variational autoencoders (VAE) in a multi-task learning process with a classifier to produces a representation for each answer by which the classifier could classify it's relation with correspond question with a high performance. The experimental results on two public datasets, SemEval 2015 and SemEval 2017, recognize the significance of the proposed framework, especially for the semi-supervised setting. The results showed that the proposed model outperformed F1 of state-of-the-art method up to about 8% for SemEval 2015 and about 5% for SemEva1 2017.
用反卷积变分自编码器进行社区问答中的答案选择
社区问答中的答案选择是自然语言处理中的一个具有挑战性的任务。主要的问题是,没有对用户给出的答案进行评估,需要对所有可能的答案进行评估,这是一项耗费时间和精力的工作。在本文中,$w\text{e}$提出了一个潜在变量模型,通过联合优化生成目标和判别目标来学习问题和答案的表示。该模型在多任务学习过程中使用变分自编码器(VAE)和分类器为每个答案生成一个表示,分类器通过该表示可以高效地分类它与对应问题的关系。在SemEval 2015和SemEval 2017两个公共数据集上的实验结果表明,所提出的框架的重要性,特别是对于半监督设置。结果表明,该模型在SemEval 2015和SemEva1 2017上的性能分别优于最先进方法的F1,分别达到8%和5%左右。
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