Title :
Regularization approach to inductive genetic programming
Author :
Nikolaev, Nikolay Y. ; Iba, Hitoshi
Author_Institution :
Dept. of Math. & Comput. Sci., London Univ., UK
fDate :
8/1/2001 12:00:00 AM
Abstract :
This paper presents an approach to regularization of inductive genetic programming tuned for learning polynomials. The objective is to achieve optimal evolutionary performance when searching high-order multivariate polynomials represented as tree structures. We show how to improve the genetic programming of polynomials by balancing its statistical bias with its variance. Bias reduction is achieved by employing a set of basis polynomials in the tree nodes for better agreement with the examples. Since this often leads to over-fitting, such tendencies are counteracted by decreasing the variance through regularization of the fitness function. We demonstrate that this balance facilitates the search as well as enables discovery of parsimonious, accurate, and predictive polynomials. The experimental results given show that this regularization approach outperforms traditional genetic programming on benchmark data mining and practical time-series prediction tasks
Keywords :
data mining; genetic algorithms; learning (artificial intelligence); polynomials; tree data structures; tree searching; Kolmogorov Gabor polynomials; data mining; inductive genetic programming; learning polynomials; local search; multivariate polynomials; statistical bias; time-series prediction; tree nodes; tree structures; Chaotic communication; Data engineering; Data mining; Genetic mutations; Genetic programming; Image processing; Pattern recognition; Polynomials; Search problems; Tree data structures;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/4235.942530