1. What contributions have the authors mentioned in the paper "Evolutionary optimization of radial basis function classifiers for data mining applications" ?
This paper describes an evolutionary algorithm ( EA ) that performs feature and model selection simultaneously for radial basis function ( RBF ) classifiers.
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2. What are the future works in "Evolutionary optimization of radial basis function classifiers for data mining applications" ?
A comparison of the evolutionary approach to filter-based feature selection mechanisms and heuristic model selection techniques was beyond the scope of this article but will certainly be done in the future.. In the future, the authors will adapt parameters of the EA automatically.
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3. What are the primary objectives of a penalty on the number of features?
The primary objectives of a penalty on the number of features are to reduce costs(computational or monetary) and to obtain interpretable networks.
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4. What is the pseudo-inverse that describes the solution of the least-squares problem?
If Gaussian basis functions are used (for other permissible functions see [2]) and the centers are chosen to be a subset of the training data and distinct, the pseudo-inverse which describes the solution does exist [2].
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