Relational Reinforcement Learning in Infinite Mario

02/28/2012
by   Shiwali Mohan, et al.
0

Relational representations in reinforcement learning allow for the use of structural information like the presence of objects and relationships between them in the description of value functions. Through this paper, we show that such representations allow for the inclusion of background knowledge that qualitatively describes a state and can be used to design agents that demonstrate learning behavior in domains with large state and actions spaces such as computer games.

READ FULL TEXT
research
03/23/2020

Incorporating Relational Background Knowledge into Reinforcement Learning via Differentiable Inductive Logic Programming

Relational Reinforcement Learning (RRL) can offers various desirable fea...
research
04/17/2023

Deep Explainable Relational Reinforcement Learning: A Neuro-Symbolic Approach

Despite numerous successes in Deep Reinforcement Learning (DRL), the lea...
research
09/25/2020

Symbolic Relational Deep Reinforcement Learning based on Graph Neural Networks

We present a novel deep reinforcement learning framework for solving rel...
research
03/25/2022

Learning Relational Rules from Rewards

Humans perceive the world in terms of objects and relations between them...
research
06/09/2021

Eye of the Beholder: Improved Relation Generalization for Text-based Reinforcement Learning Agents

Text-based games (TBGs) have become a popular proving ground for the dem...
research
10/30/2017

Eigenoption Discovery through the Deep Successor Representation

Options in reinforcement learning allow agents to hierarchically decompo...
research
03/07/2019

MinAtar: An Atari-inspired Testbed for More Efficient Reinforcement Learning Experiments

The Arcade Learning Environment (ALE) is a popular platform for evaluati...

Please sign up or login with your details

Forgot password? Click here to reset