Scalable Coordinated Exploration in Concurrent Reinforcement Learning

05/23/2018
by   Maria Dimakopoulou, et al.
6

We consider a team of reinforcement learning agents that concurrently operate in a common environment, and we develop an approach to efficient coordinated exploration that is suitable for problems of practical scale. Our approach builds on seed sampling (Dimakopoulou and Van Roy, 2018) and randomized value function learning (Osband et al., 2016). We demonstrate that, for simple tabular contexts, the approach is competitive with previously proposed tabular model learning methods (Dimakopoulou and Van Roy, 2018). With a higher-dimensional problem and a neural network value function representation, the approach learns quickly with far fewer agents than alternative exploration schemes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/05/2018

Coordinated Exploration in Concurrent Reinforcement Learning

We consider a team of reinforcement learning agents that concurrently le...
research
03/22/2017

Deep Exploration via Randomized Value Functions

We study the use of randomized value functions to guide deep exploration...
research
12/23/2019

Parameterized Indexed Value Function for Efficient Exploration in Reinforcement Learning

It is well known that quantifying uncertainty in the action-value estima...
research
06/06/2013

Direct Uncertainty Estimation in Reinforcement Learning

Optimal probabilistic approach in reinforcement learning is computationa...
research
05/29/2023

VA-learning as a more efficient alternative to Q-learning

In reinforcement learning, the advantage function is critical for policy...
research
04/15/2021

Scale Invariant Solutions for Overdetermined Linear Systems with Applications to Reinforcement Learning

Overdetermined linear systems are common in reinforcement learning, e.g....
research
02/04/2014

Generalization and Exploration via Randomized Value Functions

We propose randomized least-squares value iteration (RLSVI) -- a new rei...

Please sign up or login with your details

Forgot password? Click here to reset