通过分层解析结构增强查询理解能力

Jingjing Liu, Panupong Pasupat, Yining Wang, D. S. Cyphers, James R. Glass
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引用次数: 70

摘要

查询理解在信息检索和口语理解(SLU)领域得到了很好的研究。查询理解通常有三层:领域分类、用户意图检测和语义标记。分类器可以应用于实际系统中的领域和意图检测,语义标记(或槽填充)通常被定义为序列标记任务-将单词序列映射到标签序列。可以从标注查询中提取各种统计特征(例如n-grams),用于学习标签预测模型;然而,查询的语言特征,如层次结构和语义关系,通常在特征提取过程中被忽略。在这项工作中,我们提出了一种利用分层解析树中编码的语言知识进行查询理解的方法。具体而言,对于自然语言查询,我们从查询解析树中提取一组语法结构特征和语义依赖特征,以增强推理模型的学习。对真实自然语言查询的实验表明,利用语言知识增强序列标记模型可以提高各个领域的查询理解性能。
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Query understanding enhanced by hierarchical parsing structures
Query understanding has been well studied in the areas of information retrieval and spoken language understanding (SLU). There are generally three layers of query understanding: domain classification, user intent detection, and semantic tagging. Classifiers can be applied to domain and intent detection in real systems, and semantic tagging (or slot filling) is commonly defined as a sequence-labeling task - mapping a sequence of words to a sequence of labels. Various statistical features (e.g., n-grams) can be extracted from annotated queries for learning label prediction models; however, linguistic characteristics of queries, such as hierarchical structures and semantic relationships, are usually neglected in the feature extraction process. In this work, we propose an approach that leverages linguistic knowledge encoded in hierarchical parse trees for query understanding. Specifically, for natural language queries, we extract a set of syntactic structural features and semantic dependency features from query parse trees to enhance inference model learning. Experiments on real natural language queries show that augmenting sequence labeling models with linguistic knowledge can improve query understanding performance in various domains.
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