计算机科学
情报检索
Web查询分类
查询扩展
Web搜索查询
一致性(知识库)
任务(项目管理)
背景(考古学)
空间查询
查询优化
信息需求
查询语言
个性化
期限(时间)
萨尔盖博
利用
秩(图论)
万维网
搜索引擎
人工智能
管理
古生物学
经济
物理
组合数学
生物
量子力学
计算机安全
数学
标识
DOI:10.1177/0165551520968698
摘要
As a mechanism to guide users towards a better representation of their information needs, the query reformulation method generates new queries based on users’ historical queries. To preserve the original search intent, query reformulations should be context-aware and should attempt to meet users’ personal information needs. The mainstream method aims to generate candidate queries first, according to their past frequencies, and then score (re-rank) these candidates based on the semantic consistency of terms, dependency among latent semantic topics and user preferences. We exploit embeddings (i.e. term, user and topic embeddings) to use contextual information and individual preferences more effectively to improve personalised query reformulation. Our work involves two major tasks. In the first task, candidate queries are generated from an original query by substituting or adding one term, and the contextual similarities between the terms are calculated based on the term embeddings and augmented with user personalisation. In the second task, the candidate queries generated in the first task are evaluated and scored (re-ranked) according to the consistency of the semantic meaning of the candidate query and the user preferences based on a graphical model with the term, user and topic embeddings. Experiments show that our proposed model yields significant improvements compared with the current state-of-the-art methods.
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