Long Short-Term Session Search: Joint Personalized Reranking and Next Query Prediction

Qiannan Cheng, Z. Ren, Yujie Lin, Pengjie Ren, Zhumin Chen, Xiangyuan Liu, M. de Rijke
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引用次数: 13

Abstract

DR and next query prediction (NQP) are two core tasks in session search. They are often driven by the same search intent and, hence, it is natural to jointly optimize both tasks. So far, most models proposed for jointly optimizing document reranking (DR) and NQP have focused on users’ short-term intent in an ongoing search session. Because of this limitation, these models fail to account for users’ long-term intent as captured in their historical search sessions. In contrast, we consider a personalized mechanism for learning a user’s profile from their long-term and short-term behavior to simultaneously enhance the performance of DR and NQP in an ongoing search session. We propose a personalized session search model, called Long short-term session search, Network (LostNet), that jointly learns to rerank documents for the current query and predict the next query. LostNet consists of three modules: The hierarchical session-based attention mechanism tracks the fine-grained short-term intent in an ongoing session. The personalized multi-hop memory network tracks a user’s dynamic profile information from their prior search sessions so as to infer their personal search intent. Jointly learning of DR and NQP is aimed at simultaneously reranking documents and predicting the next query based on outputs from the above two modules. We conduct experiments on two large-scale session search benchmark datasets. The results show that LostNet achieves significant improvements over state-of-the-art baselines.
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长短期会话搜索:联合个性化重排序和下一个查询预测
DR和下一次查询预测(NQP)是会话搜索中的两个核心任务。它们通常是由相同的搜索意图驱动的,因此,联合优化这两个任务是很自然的。到目前为止,大多数联合优化文档重排序(DR)和NQP的模型都关注用户在持续搜索会话中的短期意图。由于这种限制,这些模型无法解释用户在历史搜索会话中捕获的长期意图。相比之下,我们考虑了一种个性化的机制,从用户的长期和短期行为中学习用户的个人资料,同时提高DR和NQP在持续搜索会话中的性能。我们提出了一种个性化的会话搜索模型,称为长短期会话搜索网络(LostNet),它共同学习为当前查询重新排序文档并预测下一个查询。LostNet由三个模块组成:基于会话的分层注意力机制跟踪正在进行的会话中的细粒度短期意图。所述个性化多跳存储器网络从其先前搜索会话中跟踪用户的动态配置信息,从而推断其个人搜索意图。DR和NQP的联合学习旨在同时对文档进行重新排序,并根据上述两个模块的输出预测下一个查询。我们在两个大规模会话搜索基准数据集上进行了实验。结果表明,与最先进的基线相比,LostNet实现了显著改进。
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