Uysal, İ.Güvenir, H. A.2016-02-082016-02-0820040924-669X1573-7497http://hdl.handle.net/11693/24272A new instance-based learning method is presented for regression problems with high-dimensional data. As an instance-based approach, the conventional method, KNN, is very popular for classification. Although KNN performs well on classification tasks, it does not perform as well on regression problems. We have developed a new instance-based method, called Regression by Partitioning Feature Projections (RPFP) which is designed to meet the requirement for a lazy method that achieves high levels of accuracy on regression problems. RPFP gives better performance than well-known eager approaches found in machine learning and statistics such as MARS, rule-based regression, and regression tree induction systems. The most important property of RPFP is that it is a projection-based approach that can handle interactions. We show that it outperforms existing eager or lazy approaches on many domains when there are many missing values in the training data.EnglishFeature ProjectionsMachine LearningRegressionAlgorithmsComputer Operating SystemsData ReductionDecision TheoryLeast Squares ApproximationsRegression AnalysisFeature ProjectionsRegression Tree Induction SystemsLearning SystemsInstance-based regression by partitioning feature projectionsArticle10.1023/B:APIN.0000027767.87895.b2