Dynamic algorithm selection using reinforcement learning
Loading...
Date
Authors
Armstrong, Warren
Christen, Peter
McCreath, Eric
Rendell, Alistair
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Electrical and Electronics Engineers (IEEE Inc)
Abstract
It is often the case that many algorithms exist to solve a single problem, each possessing different performance characteristics. The usual approach in this situation is to manually select the algorithm which has the best average performance. However, this strategy has drawbacks in cases where the optimal algorithm changes during an invocation of the program, in response to changes in the program's state and the computational environment. This paper presents a prototype tool that uses reinforcement learning to guide algorithm selection at runtime, matching the algorithm used to the current state of the computation. The tool is applied to a simulation similar to those used in some computational chemistry problems. It is shown that the low dimensionality of the problem enables the optimal choice of algorithm to be determined quickly, and that the learning system can react rapidly to phase changes in the target program.
Description
Citation
Collections
Source
International Workshop on Integrating AI and Data Mining (AIDM 2006) Proceedings
Type
Book Title
Entity type
Access Statement
License Rights
Restricted until
2037-12-31