David Carmel, Haggai Roitman, et al.
ACM TIST
Most collaborative filtering models assume that the interaction of users with items take a single form, e.g., only ratings or clicks or views. In fact, in most real-life recommendation scenarios, users interact with items in diverse ways. This in turn, generates complex usage data that contains multiple and diverse types of user feedback. In addition, within such a complex data setting, each user-item pair may occur more than once, implying on repetitive preferential user behaviors. In this work we tackle the problem of building a Collaborative Filtering model that takes into account such complex datasets. We propose a novel factor model, CDMF, that is capable of incorporating arbitrary and diverse feedback types without any prior domain knowledge. Moreover, CDMF is inherently capable of considering user-item repetitions. We evaluate CDMF against stateof- the-art methods with highly favorable results.
David Carmel, Haggai Roitman, et al.
ACM TIST
Haggai Roitman, Yosi Mass
ICTIR 2019
Oren Sar Shalom, Guy Uziel, et al.
ICTIR 2018
Nir Levine, Haggai Roitman, et al.
SIGIR 2017