RMBRec: Robust Multi-Behavior Recommendation towards Target Behaviors
Miaomiao Cai, Zhijie Zhang, Junfeng Fang, Zhiyong Cheng, Xiang Wang, Meng Wang

TL;DR
RMBRec introduces a robust multi-behavior recommendation framework that enhances prediction accuracy and stability by maximizing mutual information and minimizing risk variance across heterogeneous behaviors.
Contribution
It presents a novel information-theoretic approach with modules for representation and optimization robustness, addressing behavioral inconsistency in recommendation systems.
Findings
Outperforms state-of-the-art methods in accuracy.
Maintains stability under noise perturbations.
Effective on three real-world datasets.
Abstract
Multi-behavior recommendation faces a critical challenge in practice: auxiliary behaviors (e.g., clicks, carts) are often noisy, weakly correlated, or semantically misaligned with the target behavior (e.g., purchase), which leads to biased preference learning and suboptimal performance. While existing methods attempt to fuse these heterogeneous signals, they inherently lack a principled mechanism to ensure robustness against such behavioral inconsistency. In this work, we propose Robust Multi-Behavior Recommendation towards Target Behaviors (RMBRec), a robust multi-behavior recommendation framework grounded in an information-theoretic robustness principle. We interpret robustness as a joint process of maximizing predictive information while minimizing its variance across heterogeneous behavioral environments. Under this perspective, the Representation Robustness Module (RRM) enhances…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Mobile Crowdsensing and Crowdsourcing
