Iterative Hierarchical Optimization for Misspecified Problems (IHOMP)

02/10/2016
by   Daniel J. Mankowitz, et al.
0

For complex, high-dimensional Markov Decision Processes (MDPs), it may be necessary to represent the policy with function approximation. A problem is misspecified whenever, the representation cannot express any policy with acceptable performance. We introduce IHOMP : an approach for solving misspecified problems. IHOMP iteratively learns a set of context specialized options and combines these options to solve an otherwise misspecified problem. Our main contribution is proving that IHOMP enjoys theoretical convergence guarantees. In addition, we extend IHOMP to exploit Option Interruption (OI) enabling it to decide where the learned options can be reused. Our experiments demonstrate that IHOMP can find near-optimal solutions to otherwise misspecified problems and that OI can further improve the solutions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/26/2021

Average-Reward Learning and Planning with Options

We extend the options framework for temporal abstraction in reinforcemen...
research
01/16/2015

Value Iteration with Options and State Aggregation

This paper presents a way of solving Markov Decision Processes that comb...
research
09/18/2016

Principled Option Learning in Markov Decision Processes

It is well known that options can make planning more efficient, among th...
research
06/11/2015

Bootstrapping Skills

The monolithic approach to policy representation in Markov Decision Proc...
research
03/25/2017

Exploration--Exploitation in MDPs with Options

While a large body of empirical results show that temporally-extended ac...
research
08/31/2021

Approximation Methods for Partially Observed Markov Decision Processes (POMDPs)

POMDPs are useful models for systems where the true underlying state is ...
research
11/09/2018

Performance Guarantees for Homomorphisms Beyond Markov Decision Processes

Most real-world problems have huge state and/or action spaces. Therefore...

Please sign up or login with your details

Forgot password? Click here to reset