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Multi-objective Model-based Policy Search for Data-efficient Learning with Sparse Rewards

Machine Learning 2020-03-05 v3 Artificial Intelligence Neural and Evolutionary Computing Robotics Machine Learning

Abstract

The most data-efficient algorithms for reinforcement learning in robotics are model-based policy search algorithms, which alternate between learning a dynamical model of the robot and optimizing a policy to maximize the expected return given the model and its uncertainties. However, the current algorithms lack an effective exploration strategy to deal with sparse or misleading reward scenarios: if they do not experience any state with a positive reward during the initial random exploration, it is very unlikely to solve the problem. Here, we propose a novel model-based policy search algorithm, Multi-DEX, that leverages a learned dynamical model to efficiently explore the task space and solve tasks with sparse rewards in a few episodes. To achieve this, we frame the policy search problem as a multi-objective, model-based policy optimization problem with three objectives: (1) generate maximally novel state trajectories, (2) maximize the expected return and (3) keep the system in state-space regions for which the model is as accurate as possible. We then optimize these objectives using a Pareto-based multi-objective optimization algorithm. The experiments show that Multi-DEX is able to solve sparse reward scenarios (with a simulated robotic arm) in much lower interaction time than VIME, TRPO, GEP-PG, CMA-ES and Black-DROPS.

Keywords

Cite

@article{arxiv.1806.09351,
  title  = {Multi-objective Model-based Policy Search for Data-efficient Learning with Sparse Rewards},
  author = {Rituraj Kaushik and Konstantinos Chatzilygeroudis and Jean-Baptiste Mouret},
  journal= {arXiv preprint arXiv:1806.09351},
  year   = {2020}
}

Comments

Conference on Robot Learning (CoRL)- 2018; Code at https://github.com/resibots/kaushik_2018_multi-dex ; Video at https://youtu.be/9ZLwUxAAq6M

R2 v1 2026-06-23T02:40:22.755Z