Title :
Discrete probability estimation for classification using certainty-factor-based neural networks
Author_Institution :
Dept. of Comput. & Inf. Sci., Florida Univ., Gainesville, FL, USA
fDate :
3/1/2000 12:00:00 AM
Abstract :
Traditional probability estimation often demands a large amount of data for a problem of industrial scale. Neural networks have been used as an effective alternative for estimating input-output probabilities. In this paper, the certainty-factor-based neural network (CFNet) is explored for probability estimation in discrete domains. A new analysis presented here shows that the basis functions learned by the CFNet can bear precise semantics for dependencies. In the simulation study, the CFNet outperforms both the backpropagation network and the system based on the Rademacher-Walsh expansion. In the real-data experiments on splice junction and breast cancer data sets, the CFNet outperforms other neural networks and symbolic systems
Keywords :
learning (artificial intelligence); neural nets; pattern classification; probability; CFNet; I/O probabilities; Rademacher-Walsh expansion; backpropagation network; basis functions; breast cancer data set; certainty-factor-based neural networks; classification; discrete domains; discrete probability estimation; input-output probabilities; splice junction data set; Artificial neural networks; Backpropagation; Breast cancer; Error analysis; Helium; Learning systems; Machine learning; Multi-layer neural network; Neural networks; Neurons;
Journal_Title :
Neural Networks, IEEE Transactions on