NEURAL NETS: A Study of Factors Affecting the Ability of a Back Propagation Net to Recognize Alphabetic Characters and Produce Specific Symbols
Abstract
Neural nets can provide a user with a ability to train a system to accomplish a task. The net learns from the training pairs, and stores these relationships. The net provides a method to generalize an output based on the nearness to all of the trained inputs. This works well even in where the inputs are noisy or distorted. This is a study of a back propagation net. Neural nets degrade gracefully as the input deteriorates or gets farther and farther from the trained input. Hidden layers allow the net to store more complicated relationships. These relationships may well be something other than what the user thinks is the best or most obvious. This relationship is stored as connection strengths. The net applies an activation function to weighted inputs at each node and then passes that information to the next node. This study shows how well back propagation net accomplished the task of recognizing alphabetic characters. Keywords: Neural nets, Character recognition; Back propagation; Theses.
Document Details
- Document Type
- Technical Report
- Publication Date
- Dec 16, 1988
- Accession Number
- ADA204029
Entities
People
- Clarence W. Potter Sr.