Title :
Classification trees with neural network feature extraction
Author :
Guo, Heng ; Gelfand, Saul B.
Author_Institution :
CIC Corp., Redwood Shores, CA, USA
Abstract :
The use of small multilayer nets at the decision nodes of a binary classification tree to extract nonlinear features is proposed. This approach exploits the power of tree classifiers to use appropriate local features at the different levels and nodes of the tree. The nets are trained and the tree is grown using a gradient-type learning algorithm in conjunction with a heuristic class aggregation algorithm. The method improves on standard classification tree design methods in that it generally produces trees with lower error rates and fewer nodes. It also provides a structured approach to neural network classifier design which reduces the problem associated with training large unstructured nets, and transfers the problem of selecting the size of the net to the simpler problem of finding the right size tree. Example concern waveform and handwritten character recognition
Keywords :
character recognition; feature extraction; feedforward neural nets; pattern recognition; trees (mathematics); binary classification tree; classification tree design methods; decision nodes; error rates; gradient-type learning algorithm; handwritten character recognition; heuristic class aggregation algorithm; local features; multilayer nets; neural network classifier design; neural network feature extraction; nonlinear features; tree classifiers; tree growing; tree pruning; waveform recognition; Binary trees; Character recognition; Classification tree analysis; Feature extraction; Heuristic algorithms; Intelligent networks; Multi-layer neural network; Neural networks; Testing; Vectors;
Conference_Titel :
Computer Vision and Pattern Recognition, 1992. Proceedings CVPR '92., 1992 IEEE Computer Society Conference on
Conference_Location :
Champaign, IL
Print_ISBN :
0-8186-2855-3
DOI :
10.1109/CVPR.1992.223275