Bringing Reasoning to Generative Recommendation Through the Lens of Cascaded Ranking
Xinyu Lin, Pengyuan Liu, Wenjie Wang, Yicheng Hu, Chen Xu, Fuli Feng, Qifan Wang, Tat-Seng Chua

TL;DR
This paper identifies bias amplification in generative recommendation models and introduces CARE, a cascaded reasoning framework that enhances diversity and accuracy by integrating heterogeneous information and adaptive computation.
Contribution
The paper proposes CARE, a novel cascaded reasoning framework that mitigates bias amplification in generative recommendation by progressive history encoding and query-anchored reasoning.
Findings
CARE improves recommendation accuracy and diversity
CARE demonstrates scalability across multiple datasets
Empirical results show enhanced efficiency and resource utilization
Abstract
Generative Recommendation (GR) has become a promising end-to-end approach with high FLOPS utilization for resource-efficient recommendation. Despite the effectiveness, we show that current GR models suffer from a critical \textbf{bias amplification} issue, where token-level bias escalates as token generation progresses, ultimately limiting the recommendation diversity and hurting the user experience. By comparing against the key factor behind the success of traditional multi-stage pipelines, we reveal two limitations in GR that can amplify the bias: homogeneous reliance on the encoded history, and fixed computational budgets that prevent deeper user preference understanding. To combat the bias amplification issue, it is crucial for GR to 1) incorporate more heterogeneous information, and 2) allocate greater computational resources at each token generation step. To this end, we propose…
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Taxonomy
TopicsRecommender Systems and Techniques · Explainable Artificial Intelligence (XAI) · Topic Modeling
