Paper
21 March 1989 An Adaptive, Layered Bayes Network
James S. J. Lee, James C. Bezdek
Author Affiliations +
Abstract
An adptive pattern recognition network is described that has several internal feature selection layers. Bayes rule combines features and derives each layer from its predecessor starting from two features per node in the first internal layer. Nodes in higher order layers involve more features than those in the lower order layers. Each node in the last internal layer involves all the input features, and is constructed by different feature combinations. A confidence combination layer then combines recognition confidences of the nodes in the last internal layer. This layer dynamically selects only the most significant (weighted) nodes for each class. Our network provides rapid incremental learning from new training samples, dynamic introduction of new classes and new features, and the exclusion of existing classes and features without retraining on the modified data. We illustrate our method by comparing empirical error rates obtained by applying the layered network, a single internal layer network, and the Bayes quadratic decision rule to the ubiquitous IRIS data.
© (1989) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
James S. J. Lee and James C. Bezdek "An Adaptive, Layered Bayes Network", Proc. SPIE 1095, Applications of Artificial Intelligence VII, (21 March 1989); https://doi.org/10.1117/12.969328
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KEYWORDS
Evolutionary algorithms

Artificial intelligence

Pattern recognition

Detection and tracking algorithms

Image classification

Iris recognition

Feature selection

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