Hierarchical feature selection is a new research area in machine learning/data mining, which consists of performing feature selection by exploiting dependency relationships among hierarchically structured features. This paper evaluates four hierarchical feature selection methods, i.e., HIP, MR, SHSEL and GTD, used together with four types of lazy learning-based classifiers, i.e., Naïve Bayes, Tree Augmented Naïve Bayes, Bayesian Network Augmented Naïve Bayes and k-Nearest Neighbors classifiers. These four hierarchical feature selection methods are compared with each other and with a well-known “flat” feature selection method, i.e., Correlation-based Feature Selection. The adopted bioinformatics datasets consist of aging-related genes used a...
As data mining develops and expands to new application areas, feature selection also reveals various...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Hierarchical feature selection is a new research area in machine learning/data mining, which consist...
In the context of the classification task of data mining or machine learning, hierarchical feature s...
With the mounting quantity of ageing-related data on model organisms obtainable on the web, in speci...
The Tree Augmented Naive Bayes classifier is a type of probabilistic graphical model that can repres...
This study comprehensively evaluates the performance of 5 types of probabilistic hierarchical classi...
The Tree Augmented Na¨ıve Bayes classifier is a type of probabilistic graphical model that can rep...
Feature selection is a widespread preprocessing step in the data mining field. One of its purposes i...
Abstract—Ageing is a highly complex biological process that is still poorly understood. With the gro...
Background The prediction of human gene–abnormal phenotype associations is a fundamental step toward...
Ageing is a highly complex biological process that is still poorly understood. With the growing amou...
As data mining develops and expands to new application areas, feature selection also reveals various...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
As data mining develops and expands to new application areas, feature selection also reveals various...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...
Hierarchical feature selection is a new research area in machine learning/data mining, which consist...
In the context of the classification task of data mining or machine learning, hierarchical feature s...
With the mounting quantity of ageing-related data on model organisms obtainable on the web, in speci...
The Tree Augmented Naive Bayes classifier is a type of probabilistic graphical model that can repres...
This study comprehensively evaluates the performance of 5 types of probabilistic hierarchical classi...
The Tree Augmented Na¨ıve Bayes classifier is a type of probabilistic graphical model that can rep...
Feature selection is a widespread preprocessing step in the data mining field. One of its purposes i...
Abstract—Ageing is a highly complex biological process that is still poorly understood. With the gro...
Background The prediction of human gene–abnormal phenotype associations is a fundamental step toward...
Ageing is a highly complex biological process that is still poorly understood. With the growing amou...
As data mining develops and expands to new application areas, feature selection also reveals various...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
As data mining develops and expands to new application areas, feature selection also reveals various...
Machine learning techniques, and in particular supervised learning methods, are nowadays widely used...
Feature selection attracts researchers who deal with machine learning and data mining. It consists o...