DocumentCode
33008
Title
Quantum-Based Algorithm for Optimizing Artificial Neural Networks
Author
Tzyy-Chyang Lu ; Gwo-Ruey Yu ; Jyh-Ching Juang
Author_Institution
Adv. Inst. of Manuf. with Hightech Innovations, Nat. Chung Cheng Univ., Chia-Yi, Taiwan
Volume
24
Issue
8
fYear
2013
fDate
Aug. 2013
Firstpage
1266
Lastpage
1278
Abstract
This paper presents a quantum-based algorithm for evolving artificial neural networks (ANNs). The aim is to design an ANN with few connections and high classification performance by simultaneously optimizing the network structure and the connection weights. Unlike most previous studies, the proposed algorithm uses quantum bit representation to codify the network. As a result, the connectivity bits do not indicate the actual links but the probability of the existence of the connections, thus alleviating mapping problems and reducing the risk of throwing away a potential candidate. In addition, in the proposed model, each weight space is decomposed into subspaces in terms of quantum bits. Thus, the algorithm performs a region by region exploration, and evolves gradually to find promising subspaces for further exploitation. This is helpful to provide a set of appropriate weights when evolving the network structure and to alleviate the noisy fitness evaluation problem. The proposed model is tested on four benchmark problems, namely breast cancer and iris, heart, and diabetes problems. The experimental results show that the proposed algorithm can produce compact ANN structures with good generalization ability compared to other algorithms.
Keywords
neural nets; optimisation; pattern classification; quantum computing; ANN structures; artificial neural network optimization; breast cancer; classification performance; diabetes problems; heart problems; iris problems; mapping problems; network codification; noisy fitness evaluation problem; quantum bit representation; quantum bits; quantum-based algorithm; Classification problem; mapping problem; quantum neural network (QNN);
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2013.2249089
Filename
6507335
Link To Document