Behavior-Aware Dual-Channel Preference Learning for Heterogeneous Sequential Recommendation
Jing Xiao, Dongqi Wu, Liwei Pan, Yawen Luo, Weike Pan, Zhong Ming

TL;DR
This paper introduces BDPL, a dual-channel framework for heterogeneous sequential recommendation that models personalized behavior transitions and preferences to improve prediction accuracy.
Contribution
The paper proposes a novel behavior-aware dual-channel preference learning framework with customized subgraphs, a cascade GNN, and contrastive learning for better heterogeneous behavior modeling.
Findings
BDPL outperforms state-of-the-art models on three real-world datasets.
The framework effectively captures personalized behavior transition relationships.
Preference-level contrastive learning enhances user representation quality.
Abstract
Heterogeneous sequential recommendation (HSR) aims to learn dynamic behavior dependencies from the diverse behaviors of user-item interactions to facilitate precise sequential recommendation. Despite many efforts yielding promising achievements, there are still challenges in modeling heterogeneous behavior data. One significant issue is the inherent sparsity of a real-world data, which can weaken the recommendation performance. Although auxiliary behaviors (e.g., clicks) partially address this problem, they inevitably introduce some noise, and the sparsity of the target behavior (e.g., purchases) remains unresolved. Additionally, contrastive learning-based augmentation in existing methods often focuses on a single behavior type, overlooking fine-grained user preferences and losing valuable information. To address these challenges, we have meticulously designed a behavior-aware…
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