Incentive-Aware Multi-Fidelity Optimization for Generative Advertising in Large Language Models
About
Generative advertising in large language model (LLM) responses requires optimizing sponsorship configurations under two strict constraints: the strategic behavior of advertisers and the high cost of stochastic generations. To address this, we propose the Incentive-Aware Multi-Fidelity Mechanism (IAMFM), a unified framework coupling Vickrey-Clarke-Groves (VCG) incentives with Multi-Fidelity Optimization to maximize expected social welfare. We compare two algorithmic instantiations (elimination-based and model-based), revealing their budget-dependent performance trade-offs. Crucially, to make VCG computationally feasible, we introduce Active Counterfactual Optimization, a "warm-start" approach that reuses optimization data for efficient payment calculation. We provide formal guarantees for approximate strategy-proofness and individual rationality, establishing a general approach for incentive-aligned, budget-constrained generative processes. Experiments demonstrate that IAMFM outperforms single-fidelity baselines across diverse budgets.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Generation | Image Generation | Mean Welfare240.3 | 25 | |
| Social Welfare Maximization | Simulated text-based generative advertising Low-Budget ≤ 16k tokens | Mean Welfare187.3 | 5 | |
| Social Welfare Maximization | Simulated text-based generative advertising High-Budget, ≥ 32k tokens | Mean Welfare190.7 | 5 |