LGCEAug 4, 2025

Generative Large-Scale Pre-trained Models for Automated Ad Bidding Optimization

arXiv:2508.02002v16 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses the problem of optimizing ad bidding for advertisers and platforms, with incremental improvements over existing generative methods.

The paper tackles challenges in automated ad bidding, such as distribution shift and constraints, by proposing GRAD, a generative model that enhances platform revenue and has been implemented at Meituan, resulting in a 2.18% increase in GMV and 10.68% increase in ROI.

Modern auto-bidding systems are required to balance overall performance with diverse advertiser goals and real-world constraints, reflecting the dynamic and evolving needs of the industry. Recent advances in conditional generative models, such as transformers and diffusers, have enabled direct trajectory generation tailored to advertiser preferences, offering a promising alternative to traditional Markov Decision Process-based methods. However, these generative methods face significant challenges, such as the distribution shift between offline and online environments, limited exploration of the action space, and the necessity to meet constraints like marginal Cost-per-Mille (CPM) and Return on Investment (ROI). To tackle these challenges, we propose GRAD (Generative Reward-driven Ad-bidding with Mixture-of-Experts), a scalable foundation model for auto-bidding that combines an Action-Mixture-of-Experts module for diverse bidding action exploration with the Value Estimator of Causal Transformer for constraint-aware optimization. Extensive offline and online experiments demonstrate that GRAD significantly enhances platform revenue, highlighting its effectiveness in addressing the evolving and diverse requirements of modern advertisers. Furthermore, GRAD has been implemented in multiple marketing scenarios at Meituan, one of the world's largest online food delivery platforms, leading to a 2.18% increase in Gross Merchandise Value (GMV) and 10.68% increase in ROI.

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