Off Environment Evaluation Using Convex Risk Minimization

12/21/2021
by   Pulkit Katdare, et al.
0

Applying reinforcement learning (RL) methods on robots typically involves training a policy in simulation and deploying it on a robot in the real world. Because of the model mismatch between the real world and the simulator, RL agents deployed in this manner tend to perform suboptimally. To tackle this problem, researchers have developed robust policy learning algorithms that rely on synthetic noise disturbances. However, such methods do not guarantee performance in the target environment. We propose a convex risk minimization algorithm to estimate the model mismatch between the simulator and the target domain using trajectory data from both environments. We show that this estimator can be used along with the simulator to evaluate performance of an RL agents in the target domain, effectively bridging the gap between these two environments. We also show that the convergence rate of our estimator to be of the order of n^-1/4, where n is the number of training samples. In simulation, we demonstrate how our method effectively approximates and evaluates performance on Gridworld, Cartpole, and Reacher environments on a range of policies. We also show that the our method is able to estimate performance of a 7 DOF robotic arm using the simulator and remotely collected data from the robot in the real world.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/04/2023

Marginalized Importance Sampling for Off-Environment Policy Evaluation

Reinforcement Learning (RL) methods are typically sample-inefficient, ma...
research
08/04/2020

Stochastic Grounded Action Transformation for Robot Learning in Simulation

Robot control policies learned in simulation do not often transfer well ...
research
10/05/2021

OTTR: Off-Road Trajectory Tracking using Reinforcement Learning

In this work, we present a novel Reinforcement Learning (RL) algorithm f...
research
12/18/2017

Multi-Fidelity Reinforcement Learning with Gaussian Processes

This paper studies the problem of Reinforcement Learning (RL) using as f...
research
09/16/2023

OmniLRS: A Photorealistic Simulator for Lunar Robotics

Developing algorithms for extra-terrestrial robotic exploration has alwa...
research
12/18/2019

Analysing Deep Reinforcement Learning Agents Trained with Domain Randomisation

Deep reinforcement learning has the potential to train robots to perform...
research
12/21/2020

myGym: Modular Toolkit for Visuomotor Robotic Tasks

We introduce a novel virtual robotic toolkit myGym, developed for reinfo...

Please sign up or login with your details

Forgot password? Click here to reset