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Auteurs principaux: Li, Chenfei, Zhao, Hantao, Yao, Weixi, Huang, Ruiming, Lu, Rongrong, Tian, Geng, Kong, Dongying
Format: Preprint
Publié: 2026
Sujets:
Accès en ligne:https://arxiv.org/abs/2603.04227
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author Li, Chenfei
Zhao, Hantao
Yao, Weixi
Huang, Ruiming
Lu, Rongrong
Tian, Geng
Kong, Dongying
author_facet Li, Chenfei
Zhao, Hantao
Yao, Weixi
Huang, Ruiming
Lu, Rongrong
Tian, Geng
Kong, Dongying
contents Optimizing reranking in advertising feeds is a constrained combinatorial problem, requiring simultaneous maximization of platform revenue and preservation of user experience. Recent generative ranking methods enable listwise optimization via autoregressive decoding, but their deployment is hindered by high inference latency and limited constraint handling. We propose a constraint-aware generative reranking framework that transforms constrained optimization into bounded neural decoding. Unlike prior approaches that separate generator and evaluator models, our framework unifies sequence generation and reward estimation into a single network. We further introduce constraint-aware reward pruning, integrating constraint satisfaction directly into decoding to efficiently generate optimal sequences. Experiments on large-scale industrial feeds and online A/B tests show that our method improves revenue and user engagement while meeting strict latency requirements, providing an efficient neural solution for constrained listwise optimization.
format Preprint
id arxiv_https___arxiv_org_abs_2603_04227
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Constraint-Aware Generative Re-ranking for Multi-Objective Optimization in Advertising Feeds
Li, Chenfei
Zhao, Hantao
Yao, Weixi
Huang, Ruiming
Lu, Rongrong
Tian, Geng
Kong, Dongying
Information Retrieval
Optimizing reranking in advertising feeds is a constrained combinatorial problem, requiring simultaneous maximization of platform revenue and preservation of user experience. Recent generative ranking methods enable listwise optimization via autoregressive decoding, but their deployment is hindered by high inference latency and limited constraint handling. We propose a constraint-aware generative reranking framework that transforms constrained optimization into bounded neural decoding. Unlike prior approaches that separate generator and evaluator models, our framework unifies sequence generation and reward estimation into a single network. We further introduce constraint-aware reward pruning, integrating constraint satisfaction directly into decoding to efficiently generate optimal sequences. Experiments on large-scale industrial feeds and online A/B tests show that our method improves revenue and user engagement while meeting strict latency requirements, providing an efficient neural solution for constrained listwise optimization.
title Constraint-Aware Generative Re-ranking for Multi-Objective Optimization in Advertising Feeds
topic Information Retrieval
url https://arxiv.org/abs/2603.04227