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深度偏好链:一种面向混合粒度推荐的新型深度学习方法

Deep Chain-of-Preference: A Novel Deep Learning Method for Mixed-Grained Recommendation

MIS Quarterly · 2025
被引 0
人大 A+FT50UTD24ABS 4*

中文导读

提出深度偏好链学习方法(CoPDL),通过自上而下的类别感知需求对齐,推断用户在混合粒度类别与物品间的选择,平衡推荐的精确性与多样性,实验表明其优于现有深度学习方法。

Abstract

The trade-off between recommending specific versus diverse information to users has long been a challenging issue in recommendation systems. In this study, we probe into a novel problem—mixed-grained recommendation (MGR)—to address this challenge. MGR involves determining the optimal recommendation granularity that aligns with users’ needs for item exploitation and exploration. To this end, we propose a novel deep chain-of-preference learning strategy to infer a user’s choice across mixed-grained categories and items, based on category-aware demand-perception alignment in a top-down manner. Specifically, we design a chain-of-preference-empowered deep learning method (CoPDL) that can infer a user’s (1) dynamic and interrelated mixed-grained demands along a multi-granularity item tree, (2) self-adapted perception along the item tree, and (3) choice regarding mixed-grained nodes in the item tree by virtue of top-down category-aware inference. Empirical evaluation results demonstrate the superior performance of CoPDL over state-of-the-art deep learning alternatives for fine-grained, coarse-grained, and mixed-grained recommendations. Further explanatory investigations render insights into how CoPDL fulfills MGR in effectively balancing the trade-off between recommendation specificity and diversity.

推荐系统深度学习混合粒度推荐用户需求感知