PAC-Bayes control: learning policies that provably generalize to novel environments

Author:

Majumdar Anirudha1,Farid Alec1,Sonar Anoopkumar2

Affiliation:

1. Department of Mechanical and Aerospace Engineering,Princeton University, Princeton, NJ, USA

2. Department of Computer Science, Princeton University,Princeton, NJ, USA

Abstract

Our goal is to learn control policies for robots that provably generalize well to novel environments given a dataset of example environments. The key technical idea behind our approach is to leverage tools from generalization theory in machine learning by exploiting a precise analogy (which we present in the form of a reduction) between generalization of control policies to novel environments and generalization of hypotheses in the supervised learning setting. In particular, we utilize the probably approximately correct (PAC)-Bayes framework, which allows us to obtain upper bounds that hold with high probability on the expected cost of (stochastic) control policies across novel environments. We propose policy learning algorithms that explicitly seek to minimize this upper bound. The corresponding optimization problem can be solved using convex optimization (relative entropy programming in particular) in the setting where we are optimizing over a finite policy space. In the more general setting of continuously parameterized policies (e.g., neural network policies), we minimize this upper bound using stochastic gradient descent. We present simulated results of our approach applied to learning (1) reactive obstacle avoidance policies and (2) neural network-based grasping policies. We also present hardware results for the Parrot Swing drone navigating through different obstacle environments. Our examples demonstrate the potential of our approach to provide strong generalization guarantees for robotic systems with continuous state and action spaces, complicated (e.g., nonlinear) dynamics, rich sensory inputs (e.g., depth images), and neural network-based policies.

Funder

Office of Naval Research

National Science Foundation

google

amazon web services

Publisher

SAGE Publications

Subject

Applied Mathematics,Artificial Intelligence,Electrical and Electronic Engineering,Mechanical Engineering,Modeling and Simulation,Software

Cited by 11 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Safe Perception-Based Control Under Stochastic Sensor Uncertainty Using Conformal Prediction;2023 62nd IEEE Conference on Decision and Control (CDC);2023-12-13

2. Probably Approximately Correct Nonlinear Model Predictive Control (PAC-NMPC);IEEE Robotics and Automation Letters;2023-11

3. Aerodynamic effect for collision-free reactive navigation of a small quadcopter;npj Robotics;2023-10-26

4. Real-Time Failure-Adaptive Control for Dynamic Robots;2023 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS);2023-10-01

5. PAC-Bayesian offline Meta-reinforcement learning;Applied Intelligence;2023-09-02

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