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Building Rich User Search Queries Profiles

机译:建立丰富的用户搜索查询配置文件

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摘要

It is well-known that for a variety of search tasks involving queries more relevant results can be presented if they are personalized according to a user's interests and search behavior. This can be achieved with user-dependent, rich web search queries profiles. These are typically built as part of a specific search personalization task so that it is unclear which characteristics of queries are most effective for modeling the user-query relationship in general. In this paper, we explore various approaches for explicitly modeling this user-query relationship independently of other search components. Our models employ generative models in layers in a prediction task. The results show that the best signals for modeling the user-query relationship come from the given query's terms and entities together with information from related entities and terms, yielding a relative improvement of up to 24.5% in MRR and Success over the baseline methods.
机译:众所周知,如果根据用户的兴趣和搜索行为,则可以呈现涉及查询的各种搜索任务。这可以通过依赖用户丰富的Web搜索查询配置文件来实现这一点。这些通常作为特定搜索个性化任务的一部分构建,以便不清楚哪些查询的特征对于常规来建立用户查询关系的最有效。在本文中,我们探讨了用于明确地模拟此用户查询关系的各种方法,独立于其他搜索组件。我们的模型在预测任务中采用了层的生成模型。结果表明,用于建模用户查询关系的最佳信号来自给定的查询的条款和实体以及相关实体和术语的信息,在MRR中产生高达24.5%的相对提高,并通过基线方法的成功。

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