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Incentive-Aware Multi-Fidelity Optimization for Generative Advertising in Large Language Models

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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.

Jiayuan Liu, Barry Wang, Jiarui Gan, Tonghan Wang, Leon Xie, Mingyu Guo, Vincent Conitzer• 2026

Related benchmarks

TaskDatasetResultRank
Image GenerationImage Generation
Mean Welfare240.3
25
Social Welfare MaximizationSimulated text-based generative advertising Low-Budget ≤ 16k tokens
Mean Welfare187.3
5
Social Welfare MaximizationSimulated text-based generative advertising High-Budget, ≥ 32k tokens
Mean Welfare190.7
5
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