Huang et al., 1990 - Google Patents
Learning algorithms for perceptions using back-propagation with selective updatesHuang et al., 1990
- Document ID
- 9334029457372034310
- Author
- Huang S
- Huang Y
- Publication year
- Publication venue
- IEEE Control Systems Magazine
External Links
Snippet
The error back-propagation algorithm for perceptrons is studied, and an extension of this algorithm that features selective learning is introduced. In selective learning, one of two selection criteria is used to screen the input data to improve the convergence property of the …
- 230000015654 memory 0 abstract description 15
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