Optimal Options for Multi-Task Reinforcement Learning Under Time Constraints

01/06/2020
by   Manuel Del Verme, et al.
0

Reinforcement learning can greatly benefit from the use of options as a way of encoding recurring behaviours and to foster exploration. An important open problem is how can an agent autonomously learn useful options when solving particular distributions of related tasks. We investigate some of the conditions that influence optimality of options, in settings where agents have a limited time budget for learning each task and the task distribution might involve problems with different levels of similarity. We directly search for optimal option sets and show that the discovered options significantly differ depending on factors such as the available learning time budget and that the found options outperform popular option-generation heuristics.

READ FULL TEXT
research
02/12/2021

Discovery of Options via Meta-Learned Subgoals

Temporal abstractions in the form of options have been shown to help rei...
research
01/06/2020

Learning Reusable Options for Multi-Task Reinforcement Learning

Reinforcement learning (RL) has become an increasingly active area of re...
research
08/22/2017

Reinforcement Learning in POMDPs with Memoryless Options and Option-Observation Initiation Sets

Many real-world reinforcement learning problems have a hierarchical natu...
research
03/02/2022

Delegated Online Search

In a delegation problem, a principal P with commitment power tries to pi...
research
10/23/2020

Origins of Algorithmic Instabilities in Crowdsourced Ranking

Crowdsourcing systems aggregate decisions of many people to help users q...
research
09/30/2022

Multi-Task Option Learning and Discovery for Stochastic Path Planning

This paper addresses the problem of reliably and efficiently solving bro...
research
10/30/2017

Eigenoption Discovery through the Deep Successor Representation

Options in reinforcement learning allow agents to hierarchically decompo...

Please sign up or login with your details

Forgot password? Click here to reset