Stability of feature selection algorithm refers to its robustness to the perturbations of the training set, parameter settings or initialization. A stable feature selection algorithm is crucial for identifying the relevant feature subset of meaningful and interpretable features which is extremely important in the task of knowledge discovery. Though there are many stability measures reported in the literature for evaluating the stability of feature selection, none of them follows all the requisite properties of a stability measure. Among them, the Kuncheva index and its modifications, are widely used in practical problems. In this work, the merits and limitations of the Kuncheva index and its existing modifications (Lustgarten, Wald, nPOG/nP...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Feature selection has become a necessary step to the analysis of high-dimensional datasets coming fr...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Feature selection plays an important role in applications with high dimensional data. The assessment...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Data mining is indispensable for business organizations for extracting useful information from the h...
Data mining is indispensable for business organizations for extracting useful information from the h...
There are needs for evaluating rank order-based similarity between different classifiers in feature ...
There are needs for evaluating rank order-based similarity between different classifiers in feature ...
There are needs for evaluating rank order-based similarity between different classifiers in feature ...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Feature selection has become a necessary step to the analysis of high-dimensional datasets coming fr...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Feature selection plays an important role in applications with high dimensional data. The assessment...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...
Data mining is indispensable for business organizations for extracting useful information from the h...
Data mining is indispensable for business organizations for extracting useful information from the h...
There are needs for evaluating rank order-based similarity between different classifiers in feature ...
There are needs for evaluating rank order-based similarity between different classifiers in feature ...
There are needs for evaluating rank order-based similarity between different classifiers in feature ...
With the proliferation of extremely high-dimensional data, feature selection algorithms have become ...
Feature selection has become a necessary step to the analysis of high-dimensional datasets coming fr...
Feature selection is a key step when dealing with high-dimensional data. In particular, these techni...