Learning Hierarchical Control Structure for Multiple Tasks and Changing Environments - Robotics Institute Carnegie Mellon University

Learning Hierarchical Control Structure for Multiple Tasks and Changing Environments

Bruce Digney
Conference Paper, Proceedings of 5th Conference on the Simulation of Adaptive Behavior (SAB '98), pp. 321 - 330, September, 1998

Abstract

While the need for hierarchies within control systems is apparent, it is also clear to many researchers that such hierarchies should be learned. Learning both the structure and the component behaviors is a difficult task. The benefit of learning the hierarchical structures of behaviors is that the decomposition of the control structure into smaller transportable chunks allows previously learned knowledge to be applied to new but related tasks. Presented in this paper are improvements to Nested Q-learning (NQL) that allow more realistic learning of control hierarchies in reinforcement environments. Also presented is a simulation of a simple robot performing a series of related tasks that is used to compare both hierarchical and non-hierarchal learning techniques.

BibTeX

@conference{Digney-1998-16611,
author = {Bruce Digney},
title = {Learning Hierarchical Control Structure for Multiple Tasks and Changing Environments},
booktitle = {Proceedings of 5th Conference on the Simulation of Adaptive Behavior (SAB '98)},
year = {1998},
month = {September},
pages = {321 - 330},
}