Publication | Closed Access
Learning the Kernel Function via Regularization
404
Citations
27
References
2005
Year
Mathematical ProgrammingOptimal KernelEngineeringMachine LearningKernel FunctionFunctional AnalysisKernels KSupport Vector MachineData SciencePattern RecognitionPublic HealthRegularization (Mathematics)Approximation TheoryRegularization FunctionalsInverse ProblemsComputer ScienceStatistical Learning TheoryDeep LearningFunctional Data AnalysisReproducing Kernel MethodKernel Method
We study the problem of finding an optimal kernel from a prescribed convex set of kernels K for learning a real-valued function by regularization. We establish for a wide variety of regularization functionals that this leads to a convex optimization problem and, for square loss regularization, we characterize the solution of this problem. We show that, although K may be an uncountable set, the optimal kernel is always obtained as a convex combination of at most m+2 basic kernels, where m is the number of data examples. In particular, our results apply to learning the optimal radial kernel or the optimal dot product kernel.
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