6533b82dfe1ef96bd12912a9

RESEARCH PRODUCT

Multi-dimensional Function Approximation and Regression Estimation

Juan Jose Perez-ruixoGustavo Camps-vallsAníbal R. Figueiras-vidalEmilio Soria-olivasFernando Perez-cruzAntonio Artés-rodríguez

subject

Support vector machineStatistics::Machine LearningMathematical optimizationFunction approximationMean squared errorDimension (vector space)Iterative methodRegression analysisFunction (mathematics)AlgorithmRegressionMathematics

description

In this communication, we generalize the Support Vector Machines (SVM) for regression estimation and function approximation to multi-dimensional problems. We propose a multi-dimensional Support Vector Regressor (MSVR) that uses a cost function with a hyperspherical insensitive zone, capable of obtaining better predictions than using an SVM independently for each dimension. The resolution of the MSVR is achieved by an iterative procedure over the Karush-Kuhn-Tucker conditions. The proposed algorithm is illustrated by computers experiments.

https://doi.org/10.1007/3-540-46084-5_123