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<p>the Tikhonov regularization parameter is accomplished either via <a href="page.php?w=cross-validation_%28statistics%29">cross-validation</a>, or via a plug-in procedure, as follows. </p>

<p><big> Generalized cross-validation estimator </big></p>
<p>A common data-driven choice for  is the minimizer of the cross-validation loss  or its generalizations. For example, <a href="page.php?w=Grace_Wahba">Grace Wahba</a> proved that the optimal parameter, in the sense of <a href="page.php?w=Multivariate_adaptive_regression_spline">generalized cross-validation</a> minimizes</p><p>
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