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ancona{at}ba.issia.cnr.it Institute of Intelligent Systems for Automation, C. N. R., Bari, Italy
sebastiano.Stramaglia{at}ba.infn.it TIRES, Center of Innovative Technologies for Signal Detection and Processing, University of Bari, Italy; Dipartimento Interateneo di Fisica, University of Bari, Italy; and Istituto Nazionale di Fisica Nucleare, Sezione di Bari, Italy
We consider kernel-based learning methods for regression and analyze what happens to the risk minimizer when new variables, statistically independent of input and target variables, are added to the set of input variables. This problem arises, for example, in the detection of causality relations between two time series. We find that the risk minimizer remains unchanged if we constrain the risk minimization to hypothesis spaces induced by suitable kernel functions. We show that not all kernel-induced hypothesis spaces enjoy this property. We present sufficient conditions ensuring that the risk minimizer does not change and show that they hold for inhomogeneous polynomial and gaussian radial basis function kernels. We also provide examples of kernel-induced hypothesis spaces whose risk minimizer changes if independent variables are added as input.
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