Multi-label feature selection is designed to select a subset of features according to their importance to multiple labels. This task can be achieved by ranking the dependencies of features and selecting the features with the highest rankings. In a multi-label feature selection problem, the algorithm may be faced with a dataset containing a large number of labels. Because the computational cost of multi-label feature selection increases according to the number of labels, the algorithm may suffer from a degradation in performance when processing very large datasets. In this study, we propose an efficient multi-label feature selection method based on an information-theoretic label selection strategy. By identifying a subset of labels that sign...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Existing multi-label learning approaches assume all labels in a dataset are of the same importance. ...
International audienceIn this paper, we discuss three wrapper multi-label feature selection methods ...
Multi-label feature selection is designed to select a subset of features according to their importan...
Abstract: In multi-label classification, feature selection is able to remove redundant and irrelevan...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...
Multi-label classification is a fast-growing field of machine learning. Recent developments have sho...
With the rapid growth of the Internet, the curse of dimensionality caused by massive multi-label dat...
Multi-label learning has emerged as a crucial paradigm in data analysis, addressing scenarios where ...
Multi-label learning is dedicated to learning functions so that each sample is labeled with a true l...
A way to achieve feature selection for classification problems polluted by label noise is proposed. ...
DoctorFeature selection in classification problems is to identify important input features in order ...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Existing multi-label learning approaches assume all labels in a dataset are of the same importance. ...
International audienceIn this paper, we discuss three wrapper multi-label feature selection methods ...
Multi-label feature selection is designed to select a subset of features according to their importan...
Abstract: In multi-label classification, feature selection is able to remove redundant and irrelevan...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...
Multi-label classification is a fast-growing field of machine learning. Recent developments have sho...
With the rapid growth of the Internet, the curse of dimensionality caused by massive multi-label dat...
Multi-label learning has emerged as a crucial paradigm in data analysis, addressing scenarios where ...
Multi-label learning is dedicated to learning functions so that each sample is labeled with a true l...
A way to achieve feature selection for classification problems polluted by label noise is proposed. ...
DoctorFeature selection in classification problems is to identify important input features in order ...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Existing multi-label learning approaches assume all labels in a dataset are of the same importance. ...
International audienceIn this paper, we discuss three wrapper multi-label feature selection methods ...