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An Active Learning Approach to Recognizing Domain-Specific Queries From Query Log

机译:从查询日志中识别域特定查询的主动学习方法

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In this paper, we address the problem of recognizing domain-specific queries from general search engine's query log. Unlike most previous work in query classification relying on external resources or annotated training queries, we take query log as the only resource for recognizing domain-specific queries. In the proposed approach, we represent query log as a heterogeneous graph and then formulate the task of domain-specific query recognition as graph-based transductive learning. In order to reduce the impact of noisy and insufficient of initial annotated queries, we further introduce an active learning strategy into the learning process such that the manual annotations needed are reduced and the recognition results can be continuously refined through interactive human supervision. Experimental results demonstrate that the proposed approach is capable of recognizing a certain amount of high-quality domain-specific queries with only a small number of manually annotated queries.
机译:在本文中,我们解决了从一般搜索引擎的查询日志中识别域特定查询的问题。与依赖于外部资源或注释的培训查询的最先前的查询分类,我们将查询日志作为唯一用于识别域特定的查询的唯一资源。在所提出的方法中,我们将查询日志表示为异构图,然后制定基于图形的转换学习的域特定查询识别的任务。为了减少嘈杂和初始注释查询的影响,我们进一步将一个积极的学习策略引入学习过程,以减少所需的手动注释,可以通过互动人体监督连续地改善识别结果。实验结果表明,该方法能够识别一定数量的高质量域特定查询,只有少量手动注释的查询。

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