Automatic Goal Generation for Reinforcement Learning Agents - Robotics Institute Carnegie Mellon University

Automatic Goal Generation for Reinforcement Learning Agents

Carlos Florensa, David Held, Xinyang Geng, and Pieter Abbeel
Conference Paper, Proceedings of (ICML) International Conference on Machine Learning, pp. 1515 - 1528, July, 2018

Abstract

Reinforcement learning (RL) is a powerful technique to train an agent to perform a task; however, an agent that is trained using RL is only capable of achieving the single task that is specified via its reward function. Such an approach does not scale well to settings in which an agent needs to perform a diverse set of tasks, such as navigating to varying positions in a room or moving objects to varying locations. Instead, we propose a method that allows an agent to automatically discover the range of tasks that it is capable of performing in its environment. We use a generator network to propose tasks for the agent to try to accomplish, each task being specified as reaching a certain parametrized subset of the state-space. The generator network is optimized using adversarial training to produce tasks that are always at the appropriate level of difficulty for the agent, thus automatically producing a curriculum. We show that, by using this framework, an agent can efficiently and automatically learn to perform a wide set of tasks without requiring any prior knowledge of its environment, even when only sparse rewards are available. Videos and code available at https://sites.google.com/view/goalgeneration4rl.

BibTeX

@conference{Florensa-2018-113050,
author = {Carlos Florensa and David Held and Xinyang Geng and Pieter Abbeel},
title = {Automatic Goal Generation for Reinforcement Learning Agents},
booktitle = {Proceedings of (ICML) International Conference on Machine Learning},
year = {2018},
month = {July},
pages = {1515 - 1528},
}