Probabilistic neural-network structure determination for pattern classification 论文

2000IEEE Transactions on Neural Networks引用 287
Neural Networks and ApplicationsIndustrial Vision Systems and Defect DetectionSpectroscopy and Chemometric Analyses

摘要

Network structure determination is an important issue in pattern classification based on a probabilistic neural network. In this study, a supervised network structure determination algorithm is proposed. The proposed algorithm consists of two parts and runs in an iterative way. The first part identifies an appropriate smoothing parameter using a genetic algorithm, while the second part determines suitable pattern layer neurons using a forward regression orthogonal algorithm. The proposed algorithm is capable of offering a fairly small network structure with satisfactory classification accuracy.