Domain Adaptation for Reinforcement Learning on the Atari

12/18/2018
by   Thomas Carr, et al.
14

Deep reinforcement learning agents have recently been successful across a variety of discrete and continuous control tasks; however, they can be slow to train and require a large number of interactions with the environment to learn a suitable policy. This is borne out by the fact that a reinforcement learning agent has no prior knowledge of the world, no pre-existing data to depend on and so must devote considerable time to exploration. Transfer learning can alleviate some of the problems by leveraging learning done on some source task to help learning on some target task. Our work presents an algorithm for initialising the hidden feature representation of the target task. We propose a domain adaptation method to transfer state representations and demonstrate transfer across domains, tasks and action spaces. We utilise adversarial domain adaptation ideas combined with an adversarial autoencoder architecture. We align our new policies' representation space with a pre-trained source policy, taking target task data generated from a random policy. We demonstrate that this initialisation step provides significant improvement when learning a new reinforcement learning task, which highlights the wide applicability of adversarial adaptation methods; even as the task and label/action space also changes.

READ FULL TEXT

page 2

page 4

research
09/16/2019

Meta Reinforcement Learning for Sim-to-real Domain Adaptation

Modern reinforcement learning methods suffer from low sample efficiency ...
research
05/12/2018

Adversarial Task Transfer from Preference

Task transfer is extremely important for reinforcement learning, since i...
research
02/05/2022

Transfer Reinforcement Learning for Differing Action Spaces via Q-Network Representations

Transfer learning approaches in reinforcement learning aim to assist age...
research
10/17/2017

Map-based Multi-Policy Reinforcement Learning: Enhancing Adaptability of Robots by Deep Reinforcement Learning

In order for robots to perform mission-critical tasks, it is essential t...
research
09/25/2019

Data Valuation using Reinforcement Learning

Quantifying the value of data is a fundamental problem in machine learni...
research
09/17/2019

Adversarial Feature Training for Generalizable Robotic Visuomotor Control

Deep reinforcement learning (RL) has enabled training action-selection p...
research
07/07/2022

Domain Adapting Speech Emotion Recognition modals to real-world scenario with Deep Reinforcement Learning

Deep reinforcement learning has been a popular training paradigm as deep...

Please sign up or login with your details

Forgot password? Click here to reset