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A convolutional neural network model for non-factoid Chinese answer selection

机译:非事实汉语答案选择的卷积神经网络模型

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Previous research on answer selections was mainly concentrated on factoid questions. Nevertheless, non-factoid questions are equally important because they are common in community question answer (CQA). In this paper, we propose a semantic calculation based convolutional neural network (SCCNN) to address this problem. The main difference of SCCNN from previous models is the use of correlation information between question and answer (QA) sentences. This method calculates correlation features for all the words in sentences based on the similarity between a question and its corresponding answer. It will also be the direct input of the convolutional neural network. These information represents correlation degrees of all the tokens and allows for focusing on the important part of QA sentences. Experimental results show that our algorithm performs better than previous methods. In addition, we compare methods modeling Chinese words and characters individually, which indicates that for CNN-based methods, modeling the single character usually have better performance.
机译:先前关于答案选择的研究主要集中在事实性问题上。尽管如此,非事实性问题同样重要,因为它们在社区问题解答(CQA)中很常见。在本文中,我们提出了一种基于语义计算的卷积神经网络(SCCNN)来解决这个问题。 SCCNN与先前模型的主要区别在于使用问答之间的相关信息。该方法基于问题及其对应答案之间的相似性,计算句子中所有单词的相关性特征。它也将是卷积神经网络的直接输入。这些信息表示所有标记的相关程度,并允许您专注于QA语句的重要部分。实验结果表明,我们的算法比以前的方法表现更好。此外,我们比较了分别对汉字和汉字建模的方法,这表明对于基于CNN的方法,对单个字符建模通常具有更好的性能。

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