To model time-dependent user intent for Web search, this paper proposes a novel method using machine learning techniques to exploit temporal features for effective time-sensitive search result re-ranking. We propose models to incorporate users' click through information for queries that are seen in the training data, and then further extend the model to deal with unseen queries considering the relationship between queries. Experiment shows significant improvement on search result ranking over original search outputs.
Ruiqiang ZhangYi ChangZhaohui ZhengDonald MetzlerJian‐Yun Nie
Snehal D. PatilAjay R. DaniJunjie CaiZheng-Jun ZhaMemberMeng IeeeShiliang WangQi ZhangSenior TianMemberB SiddiquieR FerisL DavisStefanie JegelkaShuicheng YanN KumarA BergP BelhumeurS NayarK JrvelinJ KeklinenW HsuL KennedyS.-F ChangY HuangQ LiuS ZhangD MetaxasC LampertH NickischS HarmelingR YanA HauptmannR Jin