Trust the Model When It Is Confident: Masked Model-based Actor-Critic
This addresses the challenge of sample efficiency and robustness in reinforcement learning for noisy environments, representing a strong specific gain rather than a foundational shift.
The paper tackles the problem of model-based reinforcement learning struggling with model errors in complex, noisy environments by proposing a method to use model rollouts only when the model is confident, resulting in significantly outperforming previous state-of-the-art methods on continuous control benchmarks.
It is a popular belief that model-based Reinforcement Learning (RL) is more sample efficient than model-free RL, but in practice, it is not always true due to overweighed model errors. In complex and noisy settings, model-based RL tends to have trouble using the model if it does not know when to trust the model. In this work, we find that better model usage can make a huge difference. We show theoretically that if the use of model-generated data is restricted to state-action pairs where the model error is small, the performance gap between model and real rollouts can be reduced. It motivates us to use model rollouts only when the model is confident about its predictions. We propose Masked Model-based Actor-Critic (M2AC), a novel policy optimization algorithm that maximizes a model-based lower-bound of the true value function. M2AC implements a masking mechanism based on the model's uncertainty to decide whether its prediction should be used or not. Consequently, the new algorithm tends to give robust policy improvements. Experiments on continuous control benchmarks demonstrate that M2AC has strong performance even when using long model rollouts in very noisy environments, and it significantly outperforms previous state-of-the-art methods.