Investigation of Rotation Forest Ensemble Method Using Genetic Fuzzy Systems for a Regression Problem

نویسندگان

  • Tadeusz Lasota
  • Zbigniew Telec
  • Bogdan Trawinski
  • Grzegorz Trawinski
چکیده

The rotation forest ensemble method using a genetic fuzzy rule-based system as a base learning algorithm was developed in Matlab environment. The method was applied to the real-world regression problem of predicting the prices of residential premises based on historical data of sales/purchase transactions. The computationally intensive experiments were conducted aimed to compare the accuracy of ensembles generated by our proposed method with bagging, repeated holdout, and repeated cross-validation models. The statistical analysis of results was made employing nonparametric Friedman and Wilcoxon statistical tests.

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تاریخ انتشار 2012