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MLDM
2009
Springer

Selection of Subsets of Ordered Features in Machine Learning

13 years 9 months ago
Selection of Subsets of Ordered Features in Machine Learning
The new approach of relevant feature selection in machine learning is proposed for the case of ordered features. Feature selection and regularization of decision rule are combined in a single procedure. The selection of features is realized by introducing weight coefficients, characterizing degree of relevance of respective feature. A priori information about feature ordering is taken into account in the form of quadratic penalty or in the form of absolute value penalty on the difference of weight coefficients of neighboring features. Study of a penalty function in the form of absolute value shows computational complexity of such formulation. The effective method of solution is proposed. The brief survey of author’s early papers, the mathematical frameworks, and experimental results are provided.
Oleg Seredin, Andrey Kopylov, Vadim Mottl
Added 26 Jul 2010
Updated 26 Jul 2010
Type Conference
Year 2009
Where MLDM
Authors Oleg Seredin, Andrey Kopylov, Vadim Mottl
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