Scheme-specific attribute selection with the wrapper and variants of forward selection is a popular attribute selection technique for classification that yields good results. However, it can run the risk of overfitting because of the extent of the search and the extensive use of internal cross-validation. Moreover, although wrapper evaluators tend to achieve superior accuracy compared to filters, they face a high computational cost. The problems of overfitting and high runtime occur in particular on high-dimensional datasets, like microarray data. We investigate Linear Forward Selection, a technique to reduce the number of attributes expansions in each forward selection step. Our experiments demonstrate that this approach is faster, finds ...
The ever increasing growth of databases in the real time application is a major issue for the handli...
In this work, we suggest a new feature selection technique that lets us use the wrapper approach for...
When dealing with high dimensional and low sample size data, feature selection is often needed to he...
Scheme-specific attribute selection with the wrapper and variants of forward selection is a popular ...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
High dimensions of data cause overfitting in machine learning models, can lead to reduction in accur...
Classification Forward selection a b s t r a c t Most of the widely used pattern classification algo...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
<p>We propose a new binary classification and variable selection technique especially designed for h...
Feature subset selection is an important preprocessing task for any real life data mining or pattern...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
We address problems of classification in which the number of input components (variables, features) ...
In the wrapper approach to feature subset selection, a search for an optimal set of features is made...
We propose a new feature selection criterion not based on calculated measures between attributes, o...
available at the end of the article Background: Feature selection techniques use a search-criteria d...
The ever increasing growth of databases in the real time application is a major issue for the handli...
In this work, we suggest a new feature selection technique that lets us use the wrapper approach for...
When dealing with high dimensional and low sample size data, feature selection is often needed to he...
Scheme-specific attribute selection with the wrapper and variants of forward selection is a popular ...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
High dimensions of data cause overfitting in machine learning models, can lead to reduction in accur...
Classification Forward selection a b s t r a c t Most of the widely used pattern classification algo...
Forward Selection (FS) is a popular variable selection method for linear regression. Working in a sp...
<p>We propose a new binary classification and variable selection technique especially designed for h...
Feature subset selection is an important preprocessing task for any real life data mining or pattern...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
We address problems of classification in which the number of input components (variables, features) ...
In the wrapper approach to feature subset selection, a search for an optimal set of features is made...
We propose a new feature selection criterion not based on calculated measures between attributes, o...
available at the end of the article Background: Feature selection techniques use a search-criteria d...
The ever increasing growth of databases in the real time application is a major issue for the handli...
In this work, we suggest a new feature selection technique that lets us use the wrapper approach for...
When dealing with high dimensional and low sample size data, feature selection is often needed to he...