summary:The purpose of feature selection in machine learning is at least two-fold - saving measurement acquisition costs and reducing the negative effects of the curse of dimensionality with the aim to improve the accuracy of the models and the classification rate of classifiers with respect to previously unknown data. Yet it has been shown recently that the process of feature selection itself can be negatively affected by the very same curse of dimensionality - feature selection methods may easily over-fit or perform unstably. Such an outcome is unlikely to generalize well and the resulting recognition system may fail to deliver the expectable performance. In many tasks, it is therefore crucial to employ additional mechanisms of making the...
One major component of machine learning is feature analysis which comprises of mainly two processes:...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
summary:The purpose of feature selection in machine learning is at least two-fold - saving measureme...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
In machine learning the classification task is normally known as supervised learning. In supervised ...
We give a brief overview of feature selection methods used in statistical classification. We cover f...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
Improving feature selection process resistance to failures caused by curse-of-dimensionality effect
AbstractBefore a pattern classifier can be properly designed, it is necessary to consider the featur...
summary:The paper gives an overview of feature selection techniques in statistical pattern recogniti...
One major component of machine learning is feature analysis which comprises of mainly two processes:...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
summary:The purpose of feature selection in machine learning is at least two-fold - saving measureme...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
In machine learning the classification task is normally known as supervised learning. In supervised ...
We give a brief overview of feature selection methods used in statistical classification. We cover f...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Data dimensionality is growing exponentially, which poses chal-lenges to the vast majority of existi...
Improving feature selection process resistance to failures caused by curse-of-dimensionality effect
AbstractBefore a pattern classifier can be properly designed, it is necessary to consider the featur...
summary:The paper gives an overview of feature selection techniques in statistical pattern recogniti...
One major component of machine learning is feature analysis which comprises of mainly two processes:...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
In many applications, like function approximation, pattern recognition, time series prediction, and ...