Title :
Learning with permutably homogeneous multiple-valued multiple-threshold perceptrons
Author :
Ngom, Alioune ; Reischer, Corina ; Simovici, Dan A. ; Stojmenovic, Ivan
Author_Institution :
Dept. of Math. & Comput. Sci., Quebec Univ., Trois-Rivieres, Que., Canada
Abstract :
The (k,s)-perceptrons partition the input space {0,..., k-1}n into s+1 regions using s parallel hyperplanes. Their learning abilities are examined in this paper. The previously studied homogeneous (k, k-1)-perceptron learning algorithm is generalized to the permutably homogeneous (k,s)-perceptron learning algorithm with guaranteed convergence property. We also introduce a powerful learning method that learns any permutably homogeneously separable k-valued logic function given as input
Keywords :
learning (artificial intelligence); multivalued logic; perceptrons; guaranteed convergence property; input space; learning abilities; parallel hyperplanes; permutably homogeneous (k,s)-perceptron learning algorithm; permutably homogeneous multiple-valued multiple-threshold perceptrons; permutably homogeneously separable k-valued logic function; Computational modeling; Computer science; Learning systems; Logic functions; Mathematics; Neurons; Partitioning algorithms; Testing;
Conference_Titel :
Multiple-Valued Logic, 1998. Proceedings. 1998 28th IEEE International Symposium on
Conference_Location :
Fukuoka
Print_ISBN :
0-8186-8371-6
DOI :
10.1109/ISMVL.1998.679329