Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4621413 | Journal of Mathematical Analysis and Applications | 2008 | 10 Pages |
Abstract
We propose a stochastic gradient descent algorithm for learning the gradient of a regression function from random samples of function values. This is a learning algorithm involving Mercer kernels. By a detailed analysis in reproducing kernel Hilbert spaces, we provide some error bounds to show that the gradient estimated by the algorithm converges to the true gradient, under some natural conditions on the regression function and suitable choices of the step size and regularization parameters.
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