Title :
Perceptron-how this neural network model lets you evaluate Boolean functions
Author :
Johnson, Margaret
Author_Institution :
Dept. of Comput. Sci., Stanford Univ., CA, USA
Abstract :
The author explores aspects of just what a neural network can do, by building a simple model that evaluates Boolean functions. The neural network model for the system that the author is building is one of the earliest: the perceptron, developed by Rosenblatt in the 1960s. The goal of the present work is to build a perceptron that can evaluate Boolean functions by learning the input patterns and the associated output. A major part of the process of building a neural net, the training of the network, is discussed. A wide variety of training algorithms have been developed. An analysis of the system is given, and limitations of the perceptron are described.<>
Keywords :
Boolean functions; learning (artificial intelligence); neural nets; Boolean functions; input patterns; neural network model; perceptron; training algorithms; Boolean functions; Data structures; Neural networks; Neurons;
Journal_Title :
Potentials, IEEE