Learning by Choice of Internal Representations
Grossman, Tal, Meir, Ronny, Domany, Eytan
–Neural Information Processing Systems
We introduce a learning algorithm for multilayer neural networks composed of binary linear threshold elements. Whereas existing algorithms reduce the learning process to minimizing a cost function over the weights, our method treats the internal representations as the fundamental entities to be determined. Once a correct set of internal representations is arrived at, the weights are found by the local aild biologically plausible Perceptron Learning Rule (PLR). We tested our learning algorithm on four problems: adjacency, symmetry, parity and combined symmetry-parity.
Neural Information Processing Systems
Dec-31-1989
- Technology: