Due to its simplicity, efficiency, and effectiveness, multinomial naive Bayes (MNB) has been widely used for text classification. As in naive Bayes (NB), its assumption of the conditional independence of features is often violated and, therefore, reduces its classification performance. Of the numerous approaches to alleviating its assumption of the conditional independence of features, structure extension has attracted less attention from researchers. To the best of our knowledge, only structure-extended MNB (SEMNB) has been proposed so far. SEMNB averages all weighted super-parent one-dependence multinomial estimators; therefore, it is an ensemble learning model. In this paper, we propose a single model called hidden MNB (HMNB) by adapting...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
AbstractNaïve Bayes classifiers which are widely used for text classification in machine learning ar...
In this paper, we address the problem of dealing with a large collection of data and propose a met...
Multinomial Naive Bayes with Expectation Maximization (MNB-EM) is a standard semi-supervised learnin...
The underlying assumption in traditional machine learning algorithms is that instances are Independe...
Naive Bayes (NB) is easy to construct but surprisingly effective, and it is one of the top ten class...
The conditional independence assumption of naive Bayes essentially ignores attribute dependencies an...
Abstract. This paper presents empirical results for several versions of the multinomial naive Bayes ...
This paper presents empirical results for several versions of the multinomial naive Bayes classifier...
Automated feature selection is important for text categorization to reduce feature size and to speed...
Naive Bayes is often used as a baseline in text classification because it is fast and easy to implem...
Multinomial naive Bayes (MNB) is a popular method for document classification due to its computation...
There are numerous text documents available in electronic form. More and more are becoming available...
There are numerous text documents available in electronic form. More and more are becoming available...
We augment naive Bayes models with statistical n-gram language models to address short- comings of t...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
AbstractNaïve Bayes classifiers which are widely used for text classification in machine learning ar...
In this paper, we address the problem of dealing with a large collection of data and propose a met...
Multinomial Naive Bayes with Expectation Maximization (MNB-EM) is a standard semi-supervised learnin...
The underlying assumption in traditional machine learning algorithms is that instances are Independe...
Naive Bayes (NB) is easy to construct but surprisingly effective, and it is one of the top ten class...
The conditional independence assumption of naive Bayes essentially ignores attribute dependencies an...
Abstract. This paper presents empirical results for several versions of the multinomial naive Bayes ...
This paper presents empirical results for several versions of the multinomial naive Bayes classifier...
Automated feature selection is important for text categorization to reduce feature size and to speed...
Naive Bayes is often used as a baseline in text classification because it is fast and easy to implem...
Multinomial naive Bayes (MNB) is a popular method for document classification due to its computation...
There are numerous text documents available in electronic form. More and more are becoming available...
There are numerous text documents available in electronic form. More and more are becoming available...
We augment naive Bayes models with statistical n-gram language models to address short- comings of t...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
AbstractNaïve Bayes classifiers which are widely used for text classification in machine learning ar...
In this paper, we address the problem of dealing with a large collection of data and propose a met...