Affiliation:
1. Shandong University, Qingdao, China
2. WeChat, Tencent, Shenzhen, China
3. University of Amsterdam, Amsterdam, The Netherlands
Abstract
One of the key challenges in sequential recommendation is how to extract and represent user preferences. Traditional methods rely solely on predicting the next item. But user behavior may be driven by complex preferences. Therefore, these methods cannot make accurate recommendations when the available information user behavior is limited. To explore multiple user preferences, we propose a transformer-based sequential recommendation model, named MrTransformer (
M
ulti-p
r
eference
Transformer
). For training MrTransformer, we devise a
preference-editing
-based
self-supervised learning (SSL)
mechanism that explores extra supervision signals based on relations with other sequences. The idea is to force the sequential recommendation model to discriminate between common and unique preferences in different sequences of interactions. By doing so, the sequential recommendation model is able to disentangle user preferences into multiple independent preference representations so as to improve user preference extraction and representation.
We carry out extensive experiments on five benchmark datasets. MrTransformer with preference editing significantly outperforms state-of-the-art sequential recommendation methods in terms of Recall, MRR, and NDCG. We find that long sequences of interactions from which user preferences are harder to extract and represent benefit most from preference editing.
Funder
National Key R&D 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
Hybrid Intelligence Center
Dutch Ministry of Education, Culture and Science through the Netherlands Organisation for Scientific Research
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Science Applications,General Business, Management and Accounting,Information Systems
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