Besides good predictive performance, the naive Bayesian classifier can also offer a valuable insight into the structure of the training data and effects of the attributes on the class probabilities. This structure may be effectively revealed through visualization of the classifier. We propose a new way to visualize the naive Bayesian model in the form of a nomogram. The advantages of the proposed method are simplicity of presentation, clear display of the effects of individual attribute values, and visualization of confidence intervals. Nomograms are intuitive and when used for decision support can provide a visual explanation of predicted probabilities. And finally, a naive Bayesian nomogram can be printed out and used for probability pred...
Abstract Background The Naive Bayes (NB) classifier is a powerful supervised algorithm widely used i...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Abstract Background P values are the most commonly used tool to measure evidence against a hypothesi...
The simple Bayesian classier (SBC), sometimes called Naive-Bayes, is built based on a conditional in...
Naive Bayesian classifier is one of the simplest yet surprisingly powerful technique to construct pr...
The simple Bayesian classifier (SBC), sometimes called Naive-Bayes, is built based on a conditional ...
A Bayesian (belief) network is a representation of a probability distribution over a set of random v...
The apparent difficulty people have with making Bayesian inferences has been researched heavily over...
In thesis we introduce selective nomograms, an improvement of nomograms for visualization of naive B...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
Many algorithms have been proposed for the machine learning task of classication. One of the simples...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Prediction intervals for class probabilities are of interest in machine learning because they can qu...
Bayes’ formula is a fundamental statistical method for inference judgments in uncertain situations u...
Abstract Background The Naive Bayes (NB) classifier is a powerful supervised algorithm widely used i...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Abstract Background P values are the most commonly used tool to measure evidence against a hypothesi...
The simple Bayesian classier (SBC), sometimes called Naive-Bayes, is built based on a conditional in...
Naive Bayesian classifier is one of the simplest yet surprisingly powerful technique to construct pr...
The simple Bayesian classifier (SBC), sometimes called Naive-Bayes, is built based on a conditional ...
A Bayesian (belief) network is a representation of a probability distribution over a set of random v...
The apparent difficulty people have with making Bayesian inferences has been researched heavily over...
In thesis we introduce selective nomograms, an improvement of nomograms for visualization of naive B...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
Many algorithms have been proposed for the machine learning task of classication. One of the simples...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Prediction intervals for class probabilities are of interest in machine learning because they can qu...
Bayes’ formula is a fundamental statistical method for inference judgments in uncertain situations u...
Abstract Background The Naive Bayes (NB) classifier is a powerful supervised algorithm widely used i...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Abstract Background P values are the most commonly used tool to measure evidence against a hypothesi...