Model-Based Episodic Memory Induces Dynamic Hybrid Controls

11/03/2021
by   Hung Le, et al.
12

Episodic control enables sample efficiency in reinforcement learning by recalling past experiences from an episodic memory. We propose a new model-based episodic memory of trajectories addressing current limitations of episodic control. Our memory estimates trajectory values, guiding the agent towards good policies. Built upon the memory, we construct a complementary learning model via a dynamic hybrid control unifying model-based, episodic and habitual learning into a single architecture. Experiments demonstrate that our model allows significantly faster and better learning than other strong reinforcement learning agents across a variety of environments including stochastic and non-Markovian settings.

READ FULL TEXT

page 21

page 24

research
11/20/2017

Is prioritized sweeping the better episodic control?

Episodic control has been proposed as a third approach to reinforcement ...
research
05/22/2023

TOM: Learning Policy-Aware Models for Model-Based Reinforcement Learning via Transition Occupancy Matching

Standard model-based reinforcement learning (MBRL) approaches fit a tran...
research
12/24/2018

VMAV-C: A Deep Attention-based Reinforcement Learning Algorithm for Model-based Control

Recent breakthroughs in Go play and strategic games have witnessed the g...
research
12/29/2021

Sequential Episodic Control

State of the art deep reinforcement learning algorithms are sample ineff...
research
11/21/2019

Memory-Efficient Episodic Control Reinforcement Learning with Dynamic Online k-means

Recently, neuro-inspired episodic control (EC) methods have been develop...
research
11/21/2016

Memory Lens: How Much Memory Does an Agent Use?

We propose a new method to study the internal memory used by reinforceme...
research
11/16/2022

Model Based Residual Policy Learning with Applications to Antenna Control

Non-differentiable controllers and rule-based policies are widely used f...

Please sign up or login with your details

Forgot password? Click here to reset