Classifier Learning Algorithm Based on Genetic Algorithms

Author(s):  
Li-yan Dong ◽  
Guang-yuan Liu ◽  
Sen-miao Yuan ◽  
Yong-li Li ◽  
Zhen Li
2013 ◽  
Vol 2013 ◽  
pp. 1-9 ◽  
Author(s):  
Sanyang Liu ◽  
Mingmin Zhu ◽  
Youlong Yang

Naive Bayes classifier is a simple and effective classification method, but its attribute independence assumption makes it unable to express the dependence among attributes and affects its classification performance. In this paper, we summarize the existing improved algorithms and propose a Bayesian classifier learning algorithm based on optimization model (BC-OM). BC-OM uses the chi-squared statistic to estimate the dependence coefficients among attributes, with which it constructs the objective function as an overall measure of the dependence for a classifier structure. Therefore, a problem of searching for an optimal classifier can be turned into finding the maximum value of the objective function in feasible fields. In addition, we have proved the existence and uniqueness of the numerical solution. BC-OM offers a new opinion for the research of extended Bayesian classifier. Theoretical and experimental results show that the new algorithm is correct and effective.


2014 ◽  
Vol 926-930 ◽  
pp. 2947-2950
Author(s):  
Hai Long Jia ◽  
Kun Cao

This paper studies adaptive learning for diagnostic image recognition and expounds that adaptive resonance theory is utilized to achieve ART artificial neural network of self-stability and self-makeup for recognition, which meets the requirement of learning and adaption. In terms of the principle, an algorithm of self-stability and classifier learning is also provided.


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