Paused Agent Replay Refresh

09/26/2022
by   Benjamin Parr, et al.
0

Reinforcement learning algorithms have become more complex since the invention of target networks. Unfortunately, target networks have not kept up with this increased complexity, instead requiring approximate solutions to be computationally feasible. These approximations increase noise in the Q-value targets and in the replay sampling distribution. Paused Agent Replay Refresh (PARR) is a drop-in replacement for target networks that supports more complex learning algorithms without this need for approximation. Using a basic Q-network architecture, and refreshing the novelty values, target values, and replay sampling distribution, PARR gets 2500 points in Montezuma's Revenge after only 30.9 million Atari frames. Finally, interpreting PARR in the context of carbon-based learning offers a new reason for sleep.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/30/2017

Experience Replay Using Transition Sequences

Experience replay is one of the most commonly used approaches to improve...
research
10/04/2021

Large Batch Experience Replay

Several algorithms have been proposed to sample non-uniformly the replay...
research
11/29/2021

Improving Experience Replay with Successor Representation

Prioritized experience replay is a reinforcement learning technique show...
research
06/12/2019

When to use parametric models in reinforcement learning?

We examine the question of when and how parametric models are most usefu...
research
12/29/2019

Augmented Replay Memory in Reinforcement Learning With Continuous Control

Online reinforcement learning agents are currently able to process an in...
research
03/24/2022

Remember and Forget Experience Replay for Multi-Agent Reinforcement Learning

We present the extension of the Remember and Forget for Experience Repla...
research
06/01/2022

Stabilizing Q-learning with Linear Architectures for Provably Efficient Learning

The Q-learning algorithm is a simple and widely-used stochastic approxim...

Please sign up or login with your details

Forgot password? Click here to reset