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arxiv:2406.16745

Bandits with Preference Feedback: A Stackelberg Game Perspective

Published on Jun 24, 2024
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Abstract

A preference-based bandit algorithm, MAXMINLCB, optimizes unknown functions with pairwise comparisons in infinite domains with nonlinear rewards, achieving optimal regret through confidence sequences for kernelized logistic estimators.

AI-generated summary

Bandits with preference feedback present a powerful tool for optimizing unknown target functions when only pairwise comparisons are allowed instead of direct value queries. This model allows for incorporating human feedback into online inference and optimization and has been employed in systems for fine-tuning large language models. The problem is well understood in simplified settings with linear target functions or over finite small domains that limit practical interest. Taking the next step, we consider infinite domains and nonlinear (kernelized) rewards. In this setting, selecting a pair of actions is quite challenging and requires balancing exploration and exploitation at two levels: within the pair, and along the iterations of the algorithm. We propose MAXMINLCB, which emulates this trade-off as a zero-sum Stackelberg game, and chooses action pairs that are informative and yield favorable rewards. MAXMINLCB consistently outperforms existing algorithms and satisfies an anytime-valid rate-optimal regret guarantee. This is due to our novel preference-based confidence sequences for kernelized logistic estimators.

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