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Exploring the query-flow graph with a mixture model for query recommendation
所属机构名称:中国科学院计算技术研究所
会议名称:the 34th International ACM SIGIR Conference
时间:2011
成果类型:会议
相关项目:基于大规模用户数据的推荐技术研究
作者:
Lu Bai|Jiafeng Guo|Xueqi Cheng|Xiubo Geng|Pan Du|
同会议论文项目
基于大规模用户数据的推荐技术研究
期刊论文 14
会议论文 24
专利 2
同项目会议论文
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