Variable Selection Method for Regression Models Using Computational Intelligence Techniques

Author:

Dhamodharavadhani S. 1,Rathipriya R. 1

Affiliation:

1. Periyar University, India

Abstract

Regression model (RM) is an important tool for modeling and analyzing data. It is one of the popular predictive modeling techniques which explore the relationship between a dependent (target) and independent (predictor) variables. The variable selection method is used to form a good and effective regression model. Many variable selection methods existing for regression model such as filter method, wrapper method, embedded methods, forward selection method, Backward Elimination methods, stepwise methods, and so on. In this chapter, computational intelligence-based variable selection method is discussed with respect to the regression model in cybersecurity. Generally, these regression models depend on the set of (predictor) variables. Therefore, variable selection methods are used to select the best subset of predictors from the entire set of variables. Genetic algorithm-based quick-reduct method is proposed to extract optimal predictor subset from the given data to form an optimal regression model.

Publisher

IGI Global

Reference29 articles.

1. Web usage mining using artificial ant colony clustering and linear genetic programming

2. Practical applications of genetic algorithms for efficient reduct computation;A. T.Bjorvand;Proceedings of the 15th IMACS World Congress on Scientific Computation, Modelling and Applied Mathematics

3. Data mining of user navigation patterns;J.Borges;Proceedings of the WEBKDD’99 Workshop on Web Usage Analysis and User Profiling,1999).

4. Initialization, Mutation and Selection Methods in Genetic Algorithms for Function Optimization;M. F.Bramlette;Proc ICGA 4

5. Variable Selection in Linear Regression With Many Predictors

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