The naïve Bayes model is a simple but often satisfactory supervised classification method. The original naïve Bayes scheme, does, however, have a serious weakness, namely, the harmful effect of redundant predictors. In this paper, we study how to apply a regularization technique to learn a computationally efficient classifier that is inspired by naïve Bayes. The proposed formulation, combined with an L1-penalty, is capable of discarding harmful, redundant predictors. A modification of the LARS algorithm is devised to solve this problem. We tackle both real-valued and discrete predictors, assuring that our method is applicable to a wide range of data. In the experimental section, we empirically study the effect of redundant and irrelevant pr...
In many application domains, there is a need for learning algorithms that can effectively exploit at...
This analytical review paper clearly explains Naïve Bayes machine learning techniques for simple pro...
The Naïve Bayesian Classifier and an Augmented Naïve Bayesian Classifier are applied to human classi...
The naïve Bayes model is a simple but often satisfactory supervised classification method. The origi...
Classification problems have a long history in the machine learning literature. One of the simplest,...
The main focus of this dissertation is to develop new machine learning and statistical methodologies...
The Naïve Bayes Model is a special case of Bayesian networks with strong independence assumptions. I...
AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classificat...
Despite its simplicity, the naïve Bayes learning scheme performs well on most classification tasks, ...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
International audienceIn this article we describe a novel method for regularized regression and appl...
The use of L1 regularisation for sparse learning has generated immense research interest, with succe...
. In order to avoid overfitting in neural learning, a regularization term is added to the loss funct...
In this study, we present a new classifier that combines the distance-based algorithm K-Nearest Neig...
In many application domains, there is a need for learning algorithms that can effectively exploit at...
This analytical review paper clearly explains Naïve Bayes machine learning techniques for simple pro...
The Naïve Bayesian Classifier and an Augmented Naïve Bayesian Classifier are applied to human classi...
The naïve Bayes model is a simple but often satisfactory supervised classification method. The origi...
Classification problems have a long history in the machine learning literature. One of the simplest,...
The main focus of this dissertation is to develop new machine learning and statistical methodologies...
The Naïve Bayes Model is a special case of Bayesian networks with strong independence assumptions. I...
AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classificat...
Despite its simplicity, the naïve Bayes learning scheme performs well on most classification tasks, ...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
International audienceIn this article we describe a novel method for regularized regression and appl...
The use of L1 regularisation for sparse learning has generated immense research interest, with succe...
. In order to avoid overfitting in neural learning, a regularization term is added to the loss funct...
In this study, we present a new classifier that combines the distance-based algorithm K-Nearest Neig...
In many application domains, there is a need for learning algorithms that can effectively exploit at...
This analytical review paper clearly explains Naïve Bayes machine learning techniques for simple pro...
The Naïve Bayesian Classifier and an Augmented Naïve Bayesian Classifier are applied to human classi...