Efficient Preference-Based Reinforcement Learning Using Learned Dynamics Models

01/11/2023
by   YI LIU, et al.
12

Preference-based reinforcement learning (PbRL) can enable robots to learn to perform tasks based on an individual's preferences without requiring a hand-crafted reward function. However, existing approaches either assume access to a high-fidelity simulator or analytic model or take a model-free approach that requires extensive, possibly unsafe online environment interactions. In this paper, we study the benefits and challenges of using a learned dynamics model when performing PbRL. In particular, we provide evidence that a learned dynamics model offers the following benefits when performing PbRL: (1) preference elicitation and policy optimization require significantly fewer environment interactions than model-free PbRL, (2) diverse preference queries can be synthesized safely and efficiently as a byproduct of standard model-based RL, and (3) reward pre-training based on suboptimal demonstrations can be performed without any environmental interaction. Our paper provides empirical evidence that learned dynamics models enable robots to learn customized policies based on user preferences in ways that are safer and more sample efficient than prior preference learning approaches.

READ FULL TEXT
research
10/03/2022

CostNet: An End-to-End Framework for Goal-Directed Reinforcement Learning

Reinforcement Learning (RL) is a general framework concerned with an age...
research
11/12/2022

Rewards Encoding Environment Dynamics Improves Preference-based Reinforcement Learning

Preference-based reinforcement learning (RL) algorithms help avoid the p...
research
01/03/2023

Benchmarks and Algorithms for Offline Preference-Based Reward Learning

Learning a reward function from human preferences is challenging as it t...
research
05/25/2023

Beyond Reward: Offline Preference-guided Policy Optimization

This study focuses on the topic of offline preference-based reinforcemen...
research
07/20/2021

Offline Preference-Based Apprenticeship Learning

We study how an offline dataset of prior (possibly random) experience ca...
research
10/15/2020

Human-guided Robot Behavior Learning: A GAN-assisted Preference-based Reinforcement Learning Approach

Human demonstrations can provide trustful samples to train reinforcement...
research
03/08/2021

Iterative Program Synthesis for Adaptable Social Navigation

Robot social navigation is influenced by human preferences and environme...

Please sign up or login with your details

Forgot password? Click here to reset