Mining User Intentions from Medical Queries: A Neural Network Based Heterogeneous Jointly Modeling Approach

Chenwei Zhang, Wei Fan, Nan Du, Philip S. Yu
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引用次数: 47

Abstract

Text queries are naturally encoded with user intentions. An intention detection task tries to model and discover intentions that user encoded in text queries. Unlike conventional text classification tasks where the label of text is highly correlated with some topic-specific words, words from different topic categories tend to co-occur in medical related queries. Besides the existence of topic-specific words and word order, word correlations and the way words organized into sentence are crucial to intention detection tasks. In this paper, we present a neural network based jointly modeling approach to model and capture user intentions in medical related text queries. Regardless of the exact words in text queries, the proposed method incorporates two types of heterogeneous information: 1) pairwise word feature correlations and 2) part-of-speech tags of a sentence to jointly model user intentions. Variable-length text queries are first inherently taken care of by a fixed-size pairwise feature correlation matrix. Moreover, convolution and pooling operations are applied on feature correlations to fully exploit latent semantic structure within the query. Sentence rephrasing is finally introduced as a data augmentation technique to improve model generalization ability during model training. Experiment results on real world medical queries have shown that the proposed method is able to extract complete and precise user intentions from text queries.
从医疗查询中挖掘用户意图:一种基于神经网络的异构联合建模方法
文本查询自然是用用户意图编码的。意图检测任务试图对用户在文本查询中编码的意图进行建模和发现。与传统的文本分类任务(文本的标签与某些特定主题的词高度相关)不同,来自不同主题类别的词往往同时出现在医学相关查询中。除了特定主题词和词序的存在外,词的相关性和词的句子组织方式对意图检测任务至关重要。在本文中,我们提出了一种基于神经网络的联合建模方法来建模和捕获医学相关文本查询中的用户意图。在不考虑文本查询中的确切词的情况下,该方法结合了两类异构信息:1)成对词特征关联和2)句子词性标签,共同建模用户意图。可变长度的文本查询首先由固定大小的两两特征相关矩阵来处理。此外,在特征关联上应用卷积和池化操作,充分利用查询中潜在的语义结构。最后介绍了句子改写作为一种数据增强技术,在模型训练过程中提高模型泛化能力。实际医疗查询的实验结果表明,该方法能够从文本查询中提取完整、精确的用户意图。
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