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Personalized query suggestion based on user behavior

机译:基于用户行为的个性化查询建议

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摘要

Query suggestions help users re fine their queries after they input an initial query. Previous work mainly concentrated on similarity-based and context-based query suggestion approaches. However, models that focus on adapting to a specific user (personalization) can help to improve the probability of the user being satisfied. In this paper, we propose a personalized query suggestion model based on users' search behavior (UB model), where we inject relevance between queries and users' search behavior into a basic probabilistic model. For the relevance between queries, we consider their semantical similarity and co-occurrence which indicates the behavior information from other users in web search. Regarding the current user's preference to a query, we combine the user's short-term and long-term search behavior in a linear fashion and deal with the data sparse problem with Bayesian probabilistic matrix factorization (BPMF). In particular, we also investigate the impact of different personalization strategies (the combination of the user's short-term and long-term search behavior) on the performance of query suggestion reranking. We quantify the improvement of our proposed UB model against a state-of-the-art baseline using the public AOL query logs and show that it beats the baseline in terms of metrics used in query suggestion reranking. The experimental results show that: (i) for personalized ranking, users' behavioral information helps to improve query suggestion effectiveness; and (ii) given a query, merging information inferred from the short-term and long-term search behavior of a particular user can result in a better performance than both plain approaches.
机译:查询建议帮助用户在输入初始查询后对其查询进行缩写。以前的工作主要集中在基于相似之处和基于上下文的查询建议方法。但是,专注于适应特定用户(个性化)的模型可以有助于提高用户满意的概率。在本文中,我们提出了基于用户搜索行为(UB模型)的个性化查询建议模型,其中我们将查询和用户搜索行为之间的相关性进入基本概率模型。对于查询之间的相关性,我们考虑其语义相似性和共同发生,这表明来自Web搜索中的其他用户的行为信息。关于当前用户对查询的偏好,我们以线性方式将用户的短期和长期搜索行为组合,并处理贝叶斯概率矩阵分解(BPMF)的数据稀疏问题。特别是,我们还研究了不同个性化策略的影响(用户的短期和长期搜索行为的结合)对查询建议重新划分的性能。我们使用公共AOL查询日志量化我们提出的UB模型的改进,并显示它在查询建议重新划分的指标中击败基线。实验结果表明:(i)对于个性化排名,用户的行为信息有助于提高查询建议效果; (ii)给定查询,从特定用户的短期和长期搜索行为推断的合并信息可以导致比平原方法更好的性能。

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