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Constrained Auto-Bidding via Generative Response Modeling

About

Auto-bidding systems aim to maximize advertiser value over long horizons under budget constraints and ratio targets such as cost-per-acquisition, yet future traffic and auction dynamics are non-stationary and uncertain. Existing approaches face distinct limitations: control-based pacing reacts to deviations but cannot anticipate future conditions, while RL and generative methods fold constraints into reward signals, obscuring violations and degrading under distribution shift. We shift the learning target from actions to responses with the Generative Response Model (GRM), a history-conditioned sequence model that jointly predicts future traffic volume and horizon-aggregate cost/value curves as functions of a single bid multiplier. We show that under mild monotonicity conditions, the optimality gap relative to full per-tick control is bounded by the dispersion of per-tick marginal value-per-cost. Given predicted responses, a lightweight analytic controller enforces each active constraint via a 1D root-finding step. We prove this controller is exact for the single-multiplier problem and bound constraint violations under receding-horizon replanning in terms of prediction error. Experiments on AuctionNet show that GRM improves constraint stability and overall score compared to existing baselines.

Eunseok Yang, Xingdong Zuo, Kyung-Min Kim• 2026

Related benchmarks

TaskDatasetResultRank
Auto-biddingAuctionNet P14
Score33.11
18
Auto-biddingAuctionNet P15
Score32.6
18
Auto-biddingAuctionNet P18
Score31.69
18
Auto-biddingAuctionNet P19
Score38.88
18
Auto-biddingAuctionNet P20
Score33.84
18
Auto-biddingAuctionNet Overall
Score33.88
18
Auto-biddingAuctionNet P16
Score32.48
18
Auto-biddingAuctionNet P17
Score34.57
18
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