We present a framework for characterizing Bayesian classification methods. This framework can be thought of as a spectrum of allowable dependence in a given probabilistic model with the Naive Bayes algorithm at the most restrictive end and the learning of full Bayesian networks at the most general extreme. While much work has been carried out along the two ends of this spectrum, there has been surprising little done along the middle. We analyze the assumptions made as one moves along this spectrum and show the tradeoffs between model accuracy and learning speed which become critical to consider in a variety of data mining domains. We then present a general induction algorithm that allows for traversal of this spectrum depending on the avail...
To maximize the benefit that can be derived from the information implicit in big data, ensemble meth...
AbstractMost of the Bayesian network-based classifiers are usually only able to handle discrete vari...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...
As one of the most common types of graphical models, the Bayesian classifier has become an extremely...
In this paper we present an average-case analysis of the Bayesian classifier, a simple induction alg...
AbstractThe use of Bayesian Networks (BNs) as classifiers in different fields of application has rec...
Ever increasing data quantity makes ever more urgent the need for highly scalable learners that have...
The Naive Bayesian algorithm for classification has been a staple in machine learning for decades. S...
© 2019 by the authors. Over recent decades, the rapid growth in data makes ever more urgent the...
It is rarely possible to use an optimal classifier. Often the classifier used for a specific problem...
To maximize the benefit that can be derived from the information implicit in big data, ensemble meth...
AbstractMost of the Bayesian network-based classifiers are usually only able to handle discrete vari...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
. Recent work in supervised learning has shown that a surprisingly simple Bayesian classifier with s...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...
As one of the most common types of graphical models, the Bayesian classifier has become an extremely...
In this paper we present an average-case analysis of the Bayesian classifier, a simple induction alg...
AbstractThe use of Bayesian Networks (BNs) as classifiers in different fields of application has rec...
Ever increasing data quantity makes ever more urgent the need for highly scalable learners that have...
The Naive Bayesian algorithm for classification has been a staple in machine learning for decades. S...
© 2019 by the authors. Over recent decades, the rapid growth in data makes ever more urgent the...
It is rarely possible to use an optimal classifier. Often the classifier used for a specific problem...
To maximize the benefit that can be derived from the information implicit in big data, ensemble meth...
AbstractMost of the Bayesian network-based classifiers are usually only able to handle discrete vari...
Recent work in supervised learning has shown that a surpris-ingly simple Bayesian classifier with st...