Improved Answer Selection For Factoid Questions

Jamshid Mozafari, M. Nematbakhsh, A. Fatemi
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引用次数: 1

Abstract

In recent years, question and answer systems and information retrieval have been widely used by web users. The purpose of these systems is to find answers to users' questions. These systems consist of several components that the most essential of which is the Answer Selection, which finds the most relevant answer. In related works, the proposed models used lexical features to measure the similarity of sentences, but in recent works, the line of research has changed. They used deep neural networks. In the deep neural networks, early, recurrent neural networks were used due to the sequencing structure of the text, but in state of the art works, convolutional neural networks are used. We represent a new method based on deep neural network algorithms in this research. This method attempts to find the correct answer to a given question from the pool of responses. Our proposed method uses wide convolution instead of narrow convolution, concatenates sparse features vector into feature vector and uses dropout in order to rank candidate answers of the user’s question semantically. The results show a 1.01% improvement at the MAP and a 0.2% improvement at the MRR metrics than the best previous model. The experiments show using context-sensitive interactions between input sentences is useful for finding the best answer.
改进了虚假问题的答案选择
近年来,问答系统和信息检索被网络用户广泛使用。这些系统的目的是为用户的问题找到答案。这些系统由几个部分组成,其中最重要的是答案选择,它可以找到最相关的答案。在相关研究中,提出的模型使用词汇特征来衡量句子的相似性,但在最近的研究中,研究方向发生了变化。他们使用了深度神经网络。在深度神经网络中,由于文本的排序结构,早期使用了循环神经网络,但在最新的作品中,使用了卷积神经网络。本研究提出了一种基于深度神经网络算法的新方法。这种方法试图从回答池中找到给定问题的正确答案。我们提出的方法使用宽卷积代替窄卷积,将稀疏特征向量连接到特征向量中,并使用dropout对用户问题的候选答案进行语义排序。结果表明,与之前最好的模型相比,MAP提高了1.01%,MRR指标提高了0.2%。实验表明,在输入句子之间使用上下文敏感的交互对于找到最佳答案是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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