Affiliation:
1. Shandong University, Qingdao, China
2. Shandong Normal University, Jinan, China
3. University of Amsterdam, Amsterdam, The Netherlands
Abstract
Cross-domain sequential recommendation is the task of predict the next item that the user is most likely to interact with based on past sequential behavior from multiple domains. One of the key challenges in
cross-domain sequential recommendation
is to grasp and transfer the flow of information from multiple domains so as to promote recommendations in all domains. Previous studies have investigated the flow of
behavioral
information by exploring the connection between items from different domains. The flow of knowledge (i.e., the connection between knowledge from different domains) has so far been neglected. In this article, we propose a
mixed information flow network
for
cross-domain sequential recommendation
to consider both the flow of behavioral information and the flow of knowledge by incorporating a
behavior transfer unit
and a
knowledge transfer unit
. The proposed
mixed information flow network
is able to decide when cross-domain information should be used and, if so, which cross-domain information should be used to enrich the sequence representation according to users’ current preferences. Extensive experiments conducted on four e-commerce datasets demonstrate that the proposed
mixed information flow network
is able to improve recommendation performance in different domains by modeling mixed information flow. In this article, we focus on the application of
mixed information flow network
s to a scenario with two domains, but the method can easily be extended to multiple domains.
Funder
Key Research and Development Program of China
Natural Science Foundation of China
Key Scientific and Technological Innovation Program of Shandong Province
Natural Science Foundation of Shandong Province
Tencent WeChat Rhino-Bird Focused Research Program
Fundamental Research Funds of Shandong University
National Key R&D Program of China
Publisher
Association for Computing Machinery (ACM)
Cited by
29 articles.
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