Title :
A handwritten numeral character classification using tolerant rough set
Author :
Kim, Daijin ; Bang, Sung-Yang
Author_Institution :
Dept. of Comput. Sci. & Eng., Pohang Univ. of Sci. & Technol., South Korea
fDate :
9/1/2000 12:00:00 AM
Abstract :
Proposes a data classification method based on the tolerant rough set that extends the existing equivalent rough set. A similarity measure between two data is described by a distance function of all constituent attributes and they are defined to be tolerant when their similarity measure exceeds a similarity threshold value. The determination of optimal similarity threshold value is very important for accurate classification. So, we determine it optimally by using the genetic algorithm (GA), where the goal of evolution is to balance two requirements such that: 1) some tolerant objects are required to be included in the same class as many as possible; and 2) some objects in the same class are required to be tolerant as much as possible. After finding the optimal similarity threshold value, a tolerant set of each object is obtained and the data set is grouped into the lower and upper approximation set depending on the coincidence of their classes. We propose a two-stage classification method such that all data are classified by using the lower approximation at the first stage and then the nonclassified data at the first stage are classified again by using the rough membership functions obtained from the upper approximation set. We apply the proposed classification method to the handwritten numeral character classification problem and compare its classification performance and learning time with those of the feedforward neural network´s backpropagation algorithm
Keywords :
decision theory; equivalence classes; genetic algorithms; handwritten character recognition; pattern classification; rough set theory; backpropagation algorithm; classification performance; data classification method; distance function; feedforward neural network; handwritten numeral character classification; rough membership functions; similarity measure; similarity threshold value; tolerant objects; tolerant rough set; two-stage classification method; upper approximation set; Application software; Backpropagation algorithms; Face recognition; Feedforward neural networks; Fingerprint recognition; Fuzzy logic; Fuzzy sets; Genetic algorithms; Neural networks; Pattern classification;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on