On The Asymptotics Of Penalized Splines
نویسندگان
چکیده
The asymptotic behaviour of penalized spline estimators is studied in the univariate case. We use B -splines and a penalty is placed on mth-order differences of the coefficients. The number of knots is assumed to converge to infinity as the sample size increases. We show that penalized splines behave similarly to Nadaraya-Watson kernel estimators with ‘equivalent’ kernels depending upon m. The equivalent kernels we obtain for penalized splines are the same as those found by Silverman for smoothing splines. The asymptotic distribution of the penalized spline estimator is Gaussian and we give simple expressions for the asymptotic mean and variance. Provided that it is fast enough, the rate at which the number of knots converges to infinity does not affect the asymptotic distribution. The optimal rate of convergence of the penalty parameter is given. Penalized splines are not design-adaptive.
منابع مشابه
ar X iv : 1 20 1 . 07 08 v 3 [ m at h . ST ] 1 0 Ju n 20 12 Local Asymptotics of P - splines
This report studies local asymptotics of P-splines with pth degree B-splines and a mth order difference penalty. Earlier work with p and m restricted is extended to the general case. Asymptotically, penalized splines are kernel estimators with equivalent kernels depending on m, but not on p. A central limit theorem provides simple expressions for the asymptotic mean and variance. Provided it is...
متن کاملOn the asymptotics of penalized spline smoothing
Abstract: This paper performs an asymptotic analysis of penalized spline estimators. We compare P -splines and splines with a penalty of the type used with smoothing splines. The asymptotic rates of the supremum norm of the difference between these two estimators over compact subsets of the interior and over the entire interval are established. It is shown that a Pspline and a smoothing spline ...
متن کاملOn Semiparametric Regression with O'sullivan Penalized Splines
An exposition on the use of O’Sullivan penalized splines in contemporary semiparametric regression, including mixed model and Bayesian formulations, is presented. O’Sullivan penalized splines are similar to P-splines, but have the advantage of being a direct generalization of smoothing splines. Exact expressions for the O’Sullivan penalty matrix are obtained. Comparisons between the two types o...
متن کاملConvergence of discrete and penalized least squares spherical splines
We study the convergence of discrete and penalized least squares spherical splines in spaces with stable local bases. We derive a bound for error in the approximation of a sufficiently smooth function by the discrete and penalized least squares splines. The error bound for the discrete least squares splines is explicitly dependent on the mesh size of the underlying triangulation. The error boun...
متن کاملDensity estimation in the presence of heteroskedastic measurement error
We consider density estimation when the variable of interest is subject to heteroskedastic measurement error. The density is assumed to have a smooth but unknown functional form which we model with a penalized mixture of B-splines. We treat the situation where multiple mismeasured observations of each of the variables of interest are observed for at least some of the subjects, and the measureme...
متن کامل