Dynamic regret convergence analysis and an adaptive regularization algorithm for on-policy robot imitation learning

Author:

Lee Jonathan N.1ORCID,Laskey Michael2,Tanwani Ajay Kumar1ORCID,Aswani Anil3,Goldberg Ken1

Affiliation:

1. The AUTOLab, University of California, Berkeley, CA, USA

2. Toyota Research Institute, Los Altos, CA, USA

3. Department of Industrial Engineering and Operations Research, University of California, Berkeley, CA, USA

Abstract

On-policy imitation learning algorithms such as DAgger evolve a robot control policy by executing it, measuring performance (loss), obtaining corrective feedback from a supervisor, and generating the next policy. As the loss between iterations can vary unpredictably, a fundamental question is under what conditions this process will eventually achieve a converged policy. If one assumes the underlying trajectory distribution is static (stationary), it is possible to prove convergence for DAgger. However, in more realistic models for robotics, the underlying trajectory distribution is dynamic because it is a function of the policy. Recent results show it is possible to prove convergence of DAgger when a regularity condition on the rate of change of the trajectory distributions is satisfied. In this article, we reframe this result using dynamic regret theory from the field of online optimization and show that dynamic regret can be applied to any on-policy algorithm to analyze its convergence and optimality. These results inspire a new algorithm, Adaptive On-Policy Regularization (Aor), that ensures the conditions for convergence. We present simulation results with cart–pole balancing and locomotion benchmarks that suggest Aor can significantly decrease dynamic regret and chattering as the robot learns. To the best of the authors’ knowledge, this is the first application of dynamic regret theory to imitation learning.

Funder

Siemens Foundation

Google

Hewlett-Packard Development Company

American Honda Motor

Intel Corporation

toyota research institute

National Science Foundation

Publisher

SAGE Publications

Subject

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

Reference51 articles.

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4. Convergence of discretization procedures in dynamic programming

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