TL;DR
This paper introduces MKM-SR, a novel session-based recommendation model that leverages user micro-behaviors and item knowledge through multi-task learning to improve recommendation accuracy.
Contribution
The paper proposes a new SR model that integrates micro-behaviors and item knowledge using multi-task learning, enhancing session representation and recommendation performance.
Findings
MKM-SR outperforms state-of-the-art models on benchmark datasets.
Incorporating micro-behaviors improves understanding of user preferences.
Using item knowledge alleviates data sparsity issues.
Abstract
Session-based recommendation (SR) has become an important and popular component of various e-commerce platforms, which aims to predict the next interacted item based on a given session. Most of existing SR models only focus on exploiting the consecutive items in a session interacted by a certain user, to capture the transition pattern among the items. Although some of them have been proven effective, the following two insights are often neglected. First, a user's micro-behaviors, such as the manner in which the user locates an item, the activities that the user commits on an item (e.g., reading comments, adding to cart), offer fine-grained and deep understanding of the user's preference. Second, the item attributes, also known as item knowledge, provide side information to model the transition pattern among interacted items and alleviate the data sparsity problem. These insights…
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