An important problem of text classification is high dimensionality. The performance of different feature selection methods can change based on the characteristics of different datasets. In this study, a feature selection method is developed, which integrates different filter-based feature selection methods by an ensemble learning approach. In the presented method, feature rankings obtained by five filter-based feature selection methods (mutual information measure, chi-square statistics, odds ratio, information gain and weighted log likelihood ratio) are aggregated by enhanced Borda count rank aggregation. In the experimental analysis, Reuters-21578 and 20 Newsgroups datasets are employed on support vector machines and C4.5 classifier. The e...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
An ensemble method is an approach where several classifiers are created from the training data which...
Text analysis has been attracting increasing attention in this data era. Selecting effective feature...
In this paper, alternative models for ensembling of feature selection methods for text classificatio...
Filtering feature selection method (filtering method, for short) is a well-known feature selection s...
Filtering feature selection method (filtering method, for short) is a well-known feature selection s...
The filtering feature-selection algorithm is a kind of important approach to dimensionality reductio...
Machine learning for text classification is the cornerstone of document categorization, news filteri...
Machine learning for text classification is the cornerstone of document categorization, news filteri...
Machine learning for text classification is the cornerstone of document categorization, news filteri...
Application of a feature selection algorithm to a textual data set can improve the performance of so...
WOS: 000394671000003Sentiment analysis is an important research direction of natural language proces...
Abstract. A major characteristic of text document classification problem is extremely high dimension...
Feature selection has been extensively applied in statistical pattern recognition as a mechanism for...
In this paper, we introduce an alternative framework for selecting a most relevant subset of the ori...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
An ensemble method is an approach where several classifiers are created from the training data which...
Text analysis has been attracting increasing attention in this data era. Selecting effective feature...
In this paper, alternative models for ensembling of feature selection methods for text classificatio...
Filtering feature selection method (filtering method, for short) is a well-known feature selection s...
Filtering feature selection method (filtering method, for short) is a well-known feature selection s...
The filtering feature-selection algorithm is a kind of important approach to dimensionality reductio...
Machine learning for text classification is the cornerstone of document categorization, news filteri...
Machine learning for text classification is the cornerstone of document categorization, news filteri...
Machine learning for text classification is the cornerstone of document categorization, news filteri...
Application of a feature selection algorithm to a textual data set can improve the performance of so...
WOS: 000394671000003Sentiment analysis is an important research direction of natural language proces...
Abstract. A major characteristic of text document classification problem is extremely high dimension...
Feature selection has been extensively applied in statistical pattern recognition as a mechanism for...
In this paper, we introduce an alternative framework for selecting a most relevant subset of the ori...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
An ensemble method is an approach where several classifiers are created from the training data which...
Text analysis has been attracting increasing attention in this data era. Selecting effective feature...