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Main Authors: Zhang, Mingming, Li, Na, Feiqing, Zhuang, Zheng, Hongyang, Zhou, Jiangbing, Wuyin, Wang, Sun, Sheng-jie, Chen, XiaoWei, Zhu, Junxiong, Zou, Lixin, Li, Chenliang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.02754
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author Zhang, Mingming
Li, Na
Feiqing, Zhuang
Zheng, Hongyang
Zhou, Jiangbing
Wuyin, Wang
Sun, Sheng-jie
Chen, XiaoWei
Zhu, Junxiong
Zou, Lixin
Li, Chenliang
author_facet Zhang, Mingming
Li, Na
Feiqing, Zhuang
Zheng, Hongyang
Zhou, Jiangbing
Wuyin, Wang
Sun, Sheng-jie
Chen, XiaoWei
Zhu, Junxiong
Zou, Lixin
Li, Chenliang
contents With the rapid development of e-commerce, auto-bidding has become a key asset in optimizing advertising performance under diverse advertiser environments. The current approaches focus on reinforcement learning (RL) and generative models. These efforts imitate offline historical behaviors by utilizing a complex structure with expensive hyperparameter tuning. The suboptimal trajectories further exacerbate the difficulty of policy learning. To address these challenges, we proposes QGA, a novel Q-value regularized Generative Auto-bidding method. In QGA, we propose to plug a Q-value regularization with double Q-learning strategy into the Decision Transformer backbone. This design enables joint optimization of policy imitation and action-value maximization, allowing the learned bidding policy to both leverage experience from the dataset and alleviate the adverse impact of the suboptimal trajectories. Furthermore, to safely explore the policy space beyond the data distribution, we propose a Q-value guided dual-exploration mechanism, in which the DT model is conditioned on multiple return-to-go targets and locally perturbed actions. This entire exploration process is dynamically guided by the aforementioned Q-value module, which provides principled evaluation for each candidate action. Experiments on public benchmarks and simulation environments demonstrate that QGA consistently achieves superior or highly competitive results compared to existing alternatives. Notably, in large-scale real-world A/B testing, QGA achieves a 3.27% increase in Ad GMV and a 2.49% improvement in Ad ROI.
format Preprint
id arxiv_https___arxiv_org_abs_2601_02754
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Q-Regularized Generative Auto-Bidding: From Suboptimal Trajectories to Optimal Policies
Zhang, Mingming
Li, Na
Feiqing, Zhuang
Zheng, Hongyang
Zhou, Jiangbing
Wuyin, Wang
Sun, Sheng-jie
Chen, XiaoWei
Zhu, Junxiong
Zou, Lixin
Li, Chenliang
Machine Learning
Artificial Intelligence
Information Retrieval
With the rapid development of e-commerce, auto-bidding has become a key asset in optimizing advertising performance under diverse advertiser environments. The current approaches focus on reinforcement learning (RL) and generative models. These efforts imitate offline historical behaviors by utilizing a complex structure with expensive hyperparameter tuning. The suboptimal trajectories further exacerbate the difficulty of policy learning. To address these challenges, we proposes QGA, a novel Q-value regularized Generative Auto-bidding method. In QGA, we propose to plug a Q-value regularization with double Q-learning strategy into the Decision Transformer backbone. This design enables joint optimization of policy imitation and action-value maximization, allowing the learned bidding policy to both leverage experience from the dataset and alleviate the adverse impact of the suboptimal trajectories. Furthermore, to safely explore the policy space beyond the data distribution, we propose a Q-value guided dual-exploration mechanism, in which the DT model is conditioned on multiple return-to-go targets and locally perturbed actions. This entire exploration process is dynamically guided by the aforementioned Q-value module, which provides principled evaluation for each candidate action. Experiments on public benchmarks and simulation environments demonstrate that QGA consistently achieves superior or highly competitive results compared to existing alternatives. Notably, in large-scale real-world A/B testing, QGA achieves a 3.27% increase in Ad GMV and a 2.49% improvement in Ad ROI.
title Q-Regularized Generative Auto-Bidding: From Suboptimal Trajectories to Optimal Policies
topic Machine Learning
Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2601.02754