Abstract
We study the consistency properties of a nonparametric estimator $f_n$ of a density function $f$ on the real line, which is known as the "first MPLE of Good and Gaskins," and which is obtained by maximizing the likelihood functional multiplied by the roughness penality $\exp\{- \alpha \int (f'/f)^2 f\}$ with $\alpha > 0$. Under modest assumptions on the density function $f$, and letting $\alpha = \alpha_n \rightarrow \infty$ and $\alpha_n/n \rightarrow 0$ a.s. as $n \rightarrow \infty$ we demonstrate the a.s. convergence of $f_n$ to $f$, with rates, in the Hellinger, $L_1, L_2, \sup_{\mathbb{R}}$ and Sobolev norms, as well as in integrated mean absolute deviation. Finally, the corresponding estimator for $f$ supported on the half-line, is derived and the computational feasibility as well as the consistency properties of the estimator are indicated.
Citation
V. K. Klonias. "Consistency of Two Nonparametric Maximum Penalized Likelihood Estimators of the Probability Density Function." Ann. Statist. 10 (3) 811 - 824, September, 1982. https://doi.org/10.1214/aos/1176345873
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