Robust autobidding for noisy conversion prediction models
By: Andrey Pudovikov , Alexandra Khirianova , Ekaterina Solodneva and more
Potential Business Impact:
Makes online ads more effective by handling bad guesses.
Managing millions of digital auctions is an essential task for modern advertising auction systems. The main approach to managing digital auctions is an autobidding approach, which depends on the Click-Through Rate and Conversion Rate values. While these quantities are estimated with ML models, their prediction uncertainty directly impacts advertisers' revenue and bidding strategies. To address this issue, we propose RobustBid, an efficient method for robust autobidding taking into account uncertainty in CTR and CVR predictions. Our approach leverages advanced, robust optimization techniques to prevent large errors in bids if the estimates of CTR/CVR are perturbed. We derive the analytical solution of the stated robust optimization problem, which leads to the runtime efficiency of the RobustBid method. The synthetic, iPinYou, and BAT benchmarks are used in our experimental evaluation of RobustBid. We compare our method with the non-robust baseline and the RiskBid algorithm in terms of total conversion volume (TCV) and average cost-per-click ($CPC_{avg}$) performance metrics. The experiments demonstrate that RobustBid provides bids that yield larger TCV and smaller $CPC_{avg}$ than competitors in the case of large perturbations in CTR/CVR predictions.
Similar Papers
Auto-bidding under Return-on-Spend Constraints with Uncertainty Quantification
Machine Learning (CS)
Makes online ads spend money smarter.
Lightweight Auto-bidding based on Traffic Prediction in Live Advertising
Machine Learning (Stat)
Makes online ads work better for less money.
Autobidding Arena: unified evaluation of the classical and RL-based autobidding algorithms
CS and Game Theory
Tests computer programs for online ads fairly.