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P-CNN: Enhancing text matching with positional convolutional neural network

机译:P-CNN:使用位置卷积神经网络增强文本匹配

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In recent years, positional information has shown good performance in deep neural networks for text matching. Most positional deep neural networks focus on modeling positional information based on the word-level matching signals, whereas the positional influence and interaction among texts have not been well studied during the generation of matching scores. In this paper, we propose a novel positional convolution neural matching model that holds positional influence and interaction in multiple perspectives for text matching. To be specific, we first encode the perspectives of positional information at the word level, the phrase level, and the sentence level. Then, a position-similarity mapping layer is defined to project word-level positional information to local matching signals, which bridges the gap between the word embedding input layer and the hidden convolutional layer. After that, a position sensible convolution filter is proposed to capture and extract positional information at the phrase level and the sentence level. In particular, we assume that a phrase or sentence has an influence on its neighboring phrase or sentence, and the position-sensible convolution filter is generated on the basis of influence propagation, instead of a random matrix, as in the traditional convolutional neural network. Finally, we offer a multiple-perspective matching function to aggregate positional information at the word level, phrase level, and sentence level. Three standard datasets are used to evaluate our approach, namely ClueWeb-09-Cat-B for web search and TREC-QA and WikiQA for answer selection. It is notable that we achieve the new state-of-the-art performance on ClueWeb-09-Cat-B. Furthermore, on TREC-QA and WikiQA, our model outperforms all deep neural network approaches without an attention mechanism, and is comparable to if not better than approaches that rely on attention mechanisms. (C) 2019 Elsevier B.V. All rights reserved.
机译:近年来,位置信息在用于文本匹配的深度神经网络中显示出良好的性能。大多数位置深度神经网络专注于基于单词级别的匹配信号对位置信息进行建模,而在匹配分数的生成过程中,文本之间的位置影响和交互作用尚未得到很好的研究。在本文中,我们提出了一种新颖的位置卷积神经匹配模型,该模型在多个角度上都具有位置影响和交互作用,以进行文本匹配。具体来说,我们首先在单词级别,短语级别和句子级别对位置信息的角度进行编码。然后,定义一个位置相似度映射层,以将单词级位置信息投影到局部匹配信号上,从而弥合单词嵌入输入层和隐藏卷积层之间的间隙。此后,提出了一种位置敏感卷积滤波器,以在短语级别和句子级别捕获和提取位置信息。尤其是,我们假设一个短语或句子对其相邻的短语或句子具有影响,并且像传统的卷积神经网络一样,位置敏感的卷积滤波器基于影响传播而不是随机矩阵生成。最后,我们提供了多角度匹配功能,以汇总单词级别,短语级别和句子级别的位置信息。三个标准数据集用于评估我们的方法,即用于网络搜索的ClueWeb-09-Cat-B和用于答案选择的TREC-QA和WikiQA。值得注意的是,我们在ClueWeb-09-Cat-B上实现了最新的最新性能。此外,在TREC-QA和WikiQA上,我们的模型在没有关注机制的情况下胜过所有深度神经网络方法,并且与依赖关注机制的方法相比甚至更好。 (C)2019 Elsevier B.V.保留所有权利。

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