RECENT ADVANCES IN ARTIFICIAL NEURAL NETWORKS
β Scribed by Fanelli, Anna Maria; Jain, L. C
- Publisher
- CRC PRESS
- Year
- 2017
- Tongue
- English
- Leaves
- 373
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Table of Contents
Content: A neuro-symbolic hybrid intelligent architecture with applications / J. Ghosh and I. Taha --
New radial basis neural networks and their application in a large-scale handwritten digit recognition problem / N.B. Karayiannis and S. Behnke --
Efficient neural network-based methodology for the design of multiple classifiers / N. Vassilas --
Learning fine motion in robotics : design and experiments / C. Versino and L.M. Gambardella --
A new neural network for adaptive pattern recognition of multichannel input signals / M. FernaΜndez-Delgado [and others] --
Lateral priming adaptive resonance theory (LAPART)-2 : innovation in ART / T.P. Caudell and M.J. Healy --
Neural network learning in a travel reservation domain / H.A. Aboulenien and P. De Wilde --
Recent advances in neural network applications in process control / U. Halici [and others] --
Monitoring internal combustion engines by neural metwork based virtual sensing / R.J. Howlett, M.M. de Zoysa, and S.D. Walters --
Neural architectures of fuzzy Petri nets / W. Pedrycz.
β¦ Subjects
Neural networks (Computer science);COMPUTERS / General
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