TL;DR
This paper introduces TimelyRec, a novel recommender system that models heterogeneous temporal user preference patterns, such as periodicity and evolution, to improve timely and accurate recommendations.
Contribution
It proposes a new approach that jointly learns different types of temporal patterns in user preferences using a cascade of encoders and attention modules.
Findings
TimelyRec outperforms existing models in real-world datasets.
The attention modules effectively capture heterogeneous temporal patterns.
The system improves both item prediction and timing of recommendations.
Abstract
Recommender systems have achieved great success in modeling user's preferences on items and predicting the next item the user would consume. Recently, there have been many efforts to utilize time information of users' interactions with items to capture inherent temporal patterns of user behaviors and offer timely recommendations at a given time. Existing studies regard the time information as a single type of feature and focus on how to associate it with user preferences on items. However, we argue they are insufficient for fully learning the time information because the temporal patterns of user preference are usually heterogeneous. A user's preference for a particular item may 1) increase periodically or 2) evolve over time under the influence of significant recent events, and each of these two kinds of temporal pattern appears with some unique characteristics. In this paper, we first…
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