The task of session search focuses on using interaction data to improve relevance for the user's next query at the session level. In this paper, we formulate session search as a personalization task under the framework of learning to rank. Personalization approaches re-rank results to match a user model. Such user models are usually accumulated over time based on the user's browsing behaviour. We use a pre-computed and transparent set of user models based on concepts from the social science literature. Interaction data are used to map each session to these user models. Novel features are then estimated based on such models as well as sessions' interaction data. Extensive experiments on test collections from the TREC session track show statistically significant improvements over current session search algorithms.
翻译:会话搜索任务侧重于使用互动数据,以提高对届会一级用户下一个查询的相关性。在本文中,我们将会话搜索作为学习排级框架下的个人化任务。个性化方法将结果重新排序,以与用户模式匹配。这些用户模型通常根据用户浏览行为逐渐积累。我们使用一套预先计算和透明的用户模型,这些模型以社会科学文献的概念为基础。交互式数据被用来绘制每个会话与这些用户模型的地图。然后根据这些模型以及会话的互动数据来估计新特征。关于TREC会话轨道的测试收集的广泛实验显示,与当前会话搜索算法相比,在统计上有显著的改进。