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Learning Semantic Query Suggestions

机译:学习语义查询建议

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An important application of semantic web technology is recognizing human-defined concepts in text. Query transformation is a strategy often used in search engines to derive queries that are able to return more useful search results than the original query and most popular search engines provide facilities that let users complete, specify, or reformulate their queries. We study the problem of semantic query suggestion, a special type of query transformation based on identifying semantic concepts contained in user queries. We use a feature-based approach in conjunction with supervised machine learning, augmenting term-based features with search history-based and concept-specific features. We apply our method to the task of linking queries from real-world query logs (the transaction logs of the Netherlands Institute for Sound and Vision) to the DBpedia knowledge base. We evaluate the utility of different machine learning algorithms, features, and feature types in identifying semantic concepts using a manually developed test bed and show significant improvements over an already high baseline. The resources developed for this paper, i.e., queries, human assessments, and extracted features, are available for download.
机译:语义Web技术的重要应用是在文本中识别人类定义的概念。查询变换是一个经常用于搜索引擎中的策略,以导出能够返回更有用的搜索结果的查询,而不是原始查询和大多数流行的搜索引擎提供让用户完成,指定或重新装饰查询的设施。我们研究了语义查询建议的问题,基于识别用户查询中包含的语义概念的特殊类型的查询转换。我们使用基于特征的方法与监督机器学习,以搜索历史为基础的基于术语的功能,以搜索历史为基础的功能。我们将我们的方法应用于将查询与现实世界查询日志(荷兰学院的交易日志)连接到DBPedia知识库的任务。我们使用手动开发的测试床评估不同机器学习算法,特征和特征类型的实用性,并通过手动开发的测试床显示出现显着的改进。为此论文开发的资源,即查询,人工评估和提取的功能可供下载。

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