Expert-Guided Diffusion Planner for Auto-bidding
By: Yunshan Peng , Wenzheng Shu , Jiahao Sun and more
Potential Business Impact:
Makes online ads sell more stuff for less.
Auto-bidding is extensively applied in advertising systems, serving a multitude of advertisers. Generative bidding is gradually gaining traction due to its robust planning capabilities and generalizability. In contrast to traditional reinforcement learning-based bidding, generative bidding does not rely on the Markov Decision Process (MDP) exhibiting superior planning capabilities in long-horizon scenarios. Conditional diffusion modeling approaches have demonstrated significant potential in the realm of auto-bidding. However, relying solely on return as the optimality condition is weak to guarantee the generation of genuinely optimal decision sequences, lacking personalized structural information. Moreover, diffusion models' t-step autoregressive generation mechanism inherently carries timeliness risks. To address these issues, we propose a novel conditional diffusion modeling method based on expert trajectory guidance combined with a skip-step sampling strategy to enhance generation efficiency. We have validated the effectiveness of this approach through extensive offline experiments and achieved statistically significant results in online A/B testing, achieving an increase of 11.29% in conversion and a 12.35% in revenue compared with the baseline.
Similar Papers
Expert-Guided Diffusion Planner for Auto-Bidding
Machine Learning (CS)
Makes online ads more effective, boosting sales.
Generative Auto-Bidding in Large-Scale Competitive Auctions via Diffusion Completer-Aligner
CS and Game Theory
Makes online ads win more customers for less money.
Generative Large-Scale Pre-trained Models for Automated Ad Bidding Optimization
Machine Learning (CS)
Helps online ads make more money for sellers.