Traditional recommendation models that usually utilize only one type of user-item interaction are faced with serious data sparsity or cold start issues. Multi-behavior recommendation taking use of multiple types of user-item interactions, such as clicks and favorites, can serve as an effective solution. Early efforts towards multi-behavior recommendation fail to capture behaviors' different influence strength on target behavior. They also ignore behaviors' semantics which is implied in multi-behavior data. Both of these two limitations make the data not fully exploited for improving the recommendation performance on the target behavior.
Ran RangLinlin XingLongbo ZhangHongzhen CaiZhaojie Sun
Minjie FanYongquan FanYajun DuXianyong Li
Hongfei YuE XinhuaXiaoli LiKang WangSiyang Zhang
Zhiyong ChengSai HanFan LiuLei ZhuZan GaoYuxin Peng
Shengxi FuQianqian RenXingfeng LvJinbao Li