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Principled Penalty-based Methods for Bilevel Reinforcement Learning and RLHF

About

Bilevel optimization has been recently applied to many machine learning tasks. However, their applications have been restricted to the supervised learning setting, where static objective functions with benign structures are considered. But bilevel problems such as incentive design, inverse reinforcement learning (RL), and RL from human feedback (RLHF) are often modeled as dynamic objective functions that go beyond the simple static objective structures, which pose significant challenges of using existing bilevel solutions. To tackle this new class of bilevel problems, we introduce the first principled algorithmic framework for solving bilevel RL problems through the lens of penalty formulation. We provide theoretical studies of the problem landscape and its penalty-based (policy) gradient algorithms. We demonstrate the effectiveness of our algorithms via simulations in the Stackelberg Markov game, RL from human feedback and incentive design.

Han Shen, Zhuoran Yang, Tianyi Chen• 2024

Related benchmarks

TaskDatasetResultRank
Bilevel Reinforcement LearningBilevel Reinforcement Learning LL Problem: Max
Iteration Complexity1.5
6
Bilevel Reinforcement LearningBilevel Optimization over Saddle Points LL Problem: Min-Max
Iteration Complexity1.5
3
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