The naïve Bayes classifier is considered one of the most effective classification algorithms today, competing with more modern and sophisticated classifiers. Despite being based on unrealistic (naïve) assumption that all variables are independent, given the output class, the classifier provides proper results. However, depending on the scenario utilized (network structure, number of samples or training cases, number of variables), the network may not provide appropriate results. This study uses a process variable selection, using the chi-squared test to verify the existence of dependence between variables in the data model in order to identify the reasons which prevent a Bayesian network to provide good performance. A detailed analysis of t...
AbstractBayesian networks (BNs) provide a powerful graphical model for encoding the probabilistic re...
The naïve Bayes classifier is built on the assumption of conditional independence between the attrib...
BayesClass implements ten algorithms for learning Bayesian network classifiers from discrete data. T...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
In this paper, we empirically evaluate algorithms for learning four Bayesian network (BN) classifier...
The Markov Blanket Bayesian Classifier is a recently-proposed algorithm for construction of probabil...
<p>Training set and test set errors are shown for each combination of type of distribution of data a...
One-dimensional Bayesian network classifiers (OBCs) are popular tools for classification [2]. An OBC...
AbstractThe use of Bayesian Networks (BNs) as classifiers in different fields of application has rec...
We implemented two versions of Naïve Bayesian classifiers, one for binary inputs and one for continu...
The purpose of this article is to present and evaluate the performance of a new procedure for indust...
An analysis of Bayesian networks as classifiers is presented. This analysis results in an algorithm ...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...
We investigate the use of Naive Bayesian classifiers for cor-related Gaussian feature spaces and der...
Various Bayesian network classifier learning algorithms are implemented in Weka [10].This note provi...
AbstractBayesian networks (BNs) provide a powerful graphical model for encoding the probabilistic re...
The naïve Bayes classifier is built on the assumption of conditional independence between the attrib...
BayesClass implements ten algorithms for learning Bayesian network classifiers from discrete data. T...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
In this paper, we empirically evaluate algorithms for learning four Bayesian network (BN) classifier...
The Markov Blanket Bayesian Classifier is a recently-proposed algorithm for construction of probabil...
<p>Training set and test set errors are shown for each combination of type of distribution of data a...
One-dimensional Bayesian network classifiers (OBCs) are popular tools for classification [2]. An OBC...
AbstractThe use of Bayesian Networks (BNs) as classifiers in different fields of application has rec...
We implemented two versions of Naïve Bayesian classifiers, one for binary inputs and one for continu...
The purpose of this article is to present and evaluate the performance of a new procedure for indust...
An analysis of Bayesian networks as classifiers is presented. This analysis results in an algorithm ...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...
We investigate the use of Naive Bayesian classifiers for cor-related Gaussian feature spaces and der...
Various Bayesian network classifier learning algorithms are implemented in Weka [10].This note provi...
AbstractBayesian networks (BNs) provide a powerful graphical model for encoding the probabilistic re...
The naïve Bayes classifier is built on the assumption of conditional independence between the attrib...
BayesClass implements ten algorithms for learning Bayesian network classifiers from discrete data. T...