Beyond Learning from Next Item: Sequential Recommendation via
Personalized Interest Sustainability
- URL: http://arxiv.org/abs/2209.06644v1
- Date: Wed, 14 Sep 2022 13:47:58 GMT
- Title: Beyond Learning from Next Item: Sequential Recommendation via
Personalized Interest Sustainability
- Authors: Dongmin Hyun, Chanyoung Park, Junsu Cho, and Hwanjo Yu
- Abstract summary: Sequential recommender systems have shown effective suggestions by capturing users' interest drift.
The user-centric models capture personalized interest drift based on each user's sequential consumption history.
The item-centric models consider whether users' general interest sustains after the training time, but it is not personalized.
- Score: 22.120680831015783
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sequential recommender systems have shown effective suggestions by capturing
users' interest drift. There have been two groups of existing sequential
models: user- and item-centric models. The user-centric models capture
personalized interest drift based on each user's sequential consumption
history, but do not explicitly consider whether users' interest in items
sustains beyond the training time, i.e., interest sustainability. On the other
hand, the item-centric models consider whether users' general interest sustains
after the training time, but it is not personalized. In this work, we propose a
recommender system taking advantages of the models in both categories. Our
proposed model captures personalized interest sustainability, indicating
whether each user's interest in items will sustain beyond the training time or
not. We first formulate a task that requires to predict which items each user
will consume in the recent period of the training time based on users'
consumption history. We then propose simple yet effective schemes to augment
users' sparse consumption history. Extensive experiments show that the proposed
model outperforms 10 baseline models on 11 real-world datasets. The codes are
available at https://github.com/dmhyun/PERIS.
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