短文本中的标题、修饰语和约束检测

Zhongyuan Wang, Haixun Wang, Zhirui Hu
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引用次数: 23

摘要

对于处理短文本(如搜索查询、广告关键字、标题、说明文字等)的应用程序来说,词头和修饰语检测是一个重要问题。在许多情况下,诸如搜索查询之类的短文本不遵循语法规则,并且用于检测词头和修饰语的现有方法是粗粒度的、特定于领域的和/或需要标记大量训练数据。本文介绍了一种用于词头和修饰语检测的语义方法。首先从搜索日志中获得大量实例级头部修饰符对。然后,我们开发了一种概念化机制,将实例级对泛化到概念级。最后,我们推导出的加权概念模式简洁、准确,在头部和修饰语检测中具有较强的泛化能力。此外,我们还确定了一个称为约束的修饰符子集。就短文本的意图而言,约束通常是具体的,不可忽视的,而非约束修饰语则更加主观。我们开发的机制已经用于搜索相关性和广告匹配。我们用大量的实验结果来证明我们方法的有效性。
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Head, modifier, and constraint detection in short texts
Head and modifier detection is an important problem for applications that handle short texts such as search queries, ads keywords, titles, captions, etc. In many cases, short texts such as search queries do not follow grammar rules, and existing approaches for head and modifier detection are coarse-grained, domain specific, and/or require labeling of large amounts of training data. In this paper, we introduce a semantic approach for head and modifier detection. We first obtain a large number of instance level head-modifier pairs from search log. Then, we develop a conceptualization mechanism to generalize the instance level pairs to concept level. Finally, we derive weighted concept patterns that are concise, accurate, and have strong generalization power in head and modifier detection. Furthermore, we identify a subset of modifiers that we call constraints. Constraints are usually specific and not negligible as far as the intent of the short text is concerned, while non-constraint modifiers are more subjective. The mechanism we developed has been used in production for search relevance and ads matching. We use extensive experiment results to demonstrate the effectiveness of our approach.
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