To maximize the benefit that can be derived from the information implicit in big data, ensemble methods generate multiple models with sufficient diversity through randomization or perturbation. A k-dependence Bayesian classifier (KDB) is a highly scalable learning algorithm with excellent time and space complexity, along with high expressivity. This paper introduces a new ensemble approach of KDBs, a k-dependence forest (KDF), which induces a specific attribute order and conditional dependencies between attributes for each subclassifier. We demonstrate that these subclassifiers are diverse and complementary. Our extensive experimental evaluation on 40 datasets reveals that this ensemble method achieves better classification performance than...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
To maximize the benefit that can be derived from the information implicit in big data, ensemble meth...
Ever increasing data quantity makes ever more urgent the need for highly scalable learners that have...
The inference of a general Bayesian network has been shown to be an NP-hard problem, even for approx...
The inference of a general Bayesian network has been shown to be an NP-hard problem, even for approx...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...
© 2019 by the authors. Over recent decades, the rapid growth in data makes ever more urgent the...
As one of the most common types of graphical models, the Bayesian classifier has become an extremely...
As one of the most common types of graphical models, the Bayesian classifier has become an extremely...
Bayesian network classifiers (BNCs) have demonstrated competitive classification performance in a va...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
Bayesian network classifiers (BNCs) have demonstrated competitive classification performance in a va...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
To maximize the benefit that can be derived from the information implicit in big data, ensemble meth...
Ever increasing data quantity makes ever more urgent the need for highly scalable learners that have...
The inference of a general Bayesian network has been shown to be an NP-hard problem, even for approx...
The inference of a general Bayesian network has been shown to be an NP-hard problem, even for approx...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...
© 2019 by the authors. Over recent decades, the rapid growth in data makes ever more urgent the...
As one of the most common types of graphical models, the Bayesian classifier has become an extremely...
As one of the most common types of graphical models, the Bayesian classifier has become an extremely...
Bayesian network classifiers (BNCs) have demonstrated competitive classification performance in a va...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
Bayesian network classifiers (BNCs) have demonstrated competitive classification performance in a va...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Naive Bayesian classifiers which make independence assumptions perform remarkably well on some data ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...