AbstractNaive Bayesian classifier (NBC) is a simple and effective classifier, but in the actual application, its attribute independence assumption is not always set up. This factor affects its classification performance. Attribute reduction is an effective way to improve the performance of this classification. This paper take advantage of mixed Simulated Annealing and Genetic Algorithms to optimize attribute set, so that a better NBC is constructed. Comparing the based on genetic algorithm NBC with the traditional NBC, experiment results show that the based on genetic algorithm NBC can be more effective and rapid to solve the classification performance of NBC
Naïve Bayesian algorithm is a data mining algorithm that depicts relationship between data objects u...
Different data classification algorithms have been developed and applied in various areas to analyze...
Abstract-Classification systems optimization is often performed with population based genetic algori...
AbstractNaive Bayesian classifier (NBC) is a simple and effective classifier, but in the actual appl...
Classification is the supervised learning technique of data mining which is used to extract hidden u...
The concepts of robust classification and intelligently controlling the search process of genetic al...
Evolutionary computation is a discipline that has been emerging for at least 40 or 50 years. All met...
In this paper, an advanced novel feature selection (FS) algorithm is presented, the hybrid genetic a...
In many heuristic optimization, it is easy to be trapped in local optimal. In contrast, genetic algo...
ABSTRAKSI: Naïve Bayes Classifier (NBC) merupakan salah satu metode klasifikasi yang praktis dan efi...
AbstractA new method for Feature Subset Selection in machine learning, FSS-EBNA (Feature Subset Sele...
Estimation of Bayesian network algorithms, which adopt Bayesian networks as the probabilistic model ...
AbstractTo solve a wide range of different problems, the research in black-box optimization faces se...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
The background and basic principle of Bayesian classification algorithm are briefly introduced at fi...
Naïve Bayesian algorithm is a data mining algorithm that depicts relationship between data objects u...
Different data classification algorithms have been developed and applied in various areas to analyze...
Abstract-Classification systems optimization is often performed with population based genetic algori...
AbstractNaive Bayesian classifier (NBC) is a simple and effective classifier, but in the actual appl...
Classification is the supervised learning technique of data mining which is used to extract hidden u...
The concepts of robust classification and intelligently controlling the search process of genetic al...
Evolutionary computation is a discipline that has been emerging for at least 40 or 50 years. All met...
In this paper, an advanced novel feature selection (FS) algorithm is presented, the hybrid genetic a...
In many heuristic optimization, it is easy to be trapped in local optimal. In contrast, genetic algo...
ABSTRAKSI: Naïve Bayes Classifier (NBC) merupakan salah satu metode klasifikasi yang praktis dan efi...
AbstractA new method for Feature Subset Selection in machine learning, FSS-EBNA (Feature Subset Sele...
Estimation of Bayesian network algorithms, which adopt Bayesian networks as the probabilistic model ...
AbstractTo solve a wide range of different problems, the research in black-box optimization faces se...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
The background and basic principle of Bayesian classification algorithm are briefly introduced at fi...
Naïve Bayesian algorithm is a data mining algorithm that depicts relationship between data objects u...
Different data classification algorithms have been developed and applied in various areas to analyze...
Abstract-Classification systems optimization is often performed with population based genetic algori...