Nonparametric Regression with Genetic Algorithm

유전자 알고리즘을 이용한 비모수 회귀분석

  • 김병도 (서울대학교 경영대학 경영학과) ;
  • 노상규 (서울대학교 경영대학 경영학과)
  • Published : 2001.03.31

Abstract

Predicting a variable using other variables in a large data set is a very difficult task. It involves selecting variables to include in a model and determining the shape of the relationship between variables. Nonparametric regression such as smoothing splines and neural networks are widely-used methods for such a task. We propose an alternative method based on a genetic algorithm(GA) to solve this problem. We applied GA to regression splines, a nonparametric regression method, to estimate functional forms between variables. Using several simulated and real data, our technique is shown to outperform traditional nonparametric methods such as smoothing splines and neural networks.

Keywords