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A Novel Probabilistic Framework to Broaden the Context in Query Recommendation Systems

机译:一种新的概率框架,可在查询推荐系统中扩展上下文

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This paper presents a novel probabilistic framework for broadening the notion of context in web search query recommendation systems. In the relevant literature, query suggestion is typically conducted based on past user actions of the current session, mostly related to query submission. Our proposed framework regards user context in a broader way, consisting of a series of further parameters that express it more thoroughly, such as spatial and temporal ones. Therefore, query recommendation is performed herein by considering the appropriateness of each candidate query suggestion, given this broadened context. Experimental evaluation showed that our proposed framework, utilizing spatiotemporal contextual features, is capable to increase query recommendation performance, compared to state-of-art methods such as co-occurence, adjacency and Variable-length Markov Models (VMM). Due to its generic nature, our framework can operate on the basis of further features expressing the user context than the ones studied in the present work, e.g. affect-related, toward further advancing web search query recommendation.
机译:本文提出了一种新颖的概率框架,用于扩展Web搜索查询推荐系统中的上下文概念。在相关文献中,通常基于当前会话的过去的用户操作来进行查询建议,主要与查询提交相关。我们所提出的框架以更广泛的方式对用户上下文进行了解,由一系列进一步的参数组成,该参数更彻底地表达,例如空间和临时。因此,考虑到这种扩展背景,通过考虑每个候选查询建议的适当性来执行查询推荐。实验评估表明,我们建议的框架利用时空语境特征,能够增加查询推荐性能,与诸如共同发生,邻接和可变长度马尔可夫模型(VMM)等最先进的方法相比。由于其通用性质,我们的框架可以基于表达用户上下文的进一步特征,而不是本工作中研究的进一步特征,例如,影响相关,朝着进一步推进Web搜索查询推荐。

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