Limited depth bandit-based strategy for Monte Carlo planning in continuous action spaces

06/29/2021
by   Ricardo Quinteiro, et al.
0

This paper addresses the problem of optimal control using search trees. We start by considering multi-armed bandit problems with continuous action spaces and propose LD-HOO, a limited depth variant of the hierarchical optimistic optimization (HOO) algorithm. We provide a regret analysis for LD-HOO and show that, asymptotically, our algorithm exhibits the same cumulative regret as the original HOO while being faster and more memory efficient. We then propose a Monte Carlo tree search algorithm based on LD-HOO for optimal control problems and illustrate the resulting approach's application in several optimal control problems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/08/2020

POLY-HOOT: Monte-Carlo Planning in Continuous Space MDPs with Non-Asymptotic Analysis

Monte-Carlo planning, as exemplified by Monte-Carlo Tree Search (MCTS), ...
research
08/18/2011

Doing Better Than UCT: Rational Monte Carlo Sampling in Trees

UCT, a state-of-the art algorithm for Monte Carlo tree sampling (MCTS), ...
research
04/02/2022

A UCB-based Tree Search Approach to Joint Verification-Correction Strategy for Large Scale Systems

Verification planning is a sequential decision-making problem that speci...
research
08/09/2014

Selecting Computations: Theory and Applications

Sequential decision problems are often approximately solvable by simulat...
research
03/29/2022

Search Methods for Policy Decompositions

Computing optimal control policies for complex dynamical systems require...
research
01/08/2019

Solar-Sail Trajectory Design for Multiple Near Earth Asteroid Exploration Based on Deep Neural Networks

In the preliminary trajectory design of the multi-target rendezvous prob...
research
01/08/2019

Solar-Sail Trajectory Design of Multiple Near Earth Asteroids Exploration Based on Deep Neural Network

In the preliminary trajectory design of the multi-target rendezvous prob...

Please sign up or login with your details

Forgot password? Click here to reset