Nonparametric Estimation of Isotropic Covariance Function
TLDR
This paper introduces a nonparametric sieve ML estimator using Bernstein polynomials for isotropic covariance functions, outperforming existing methods.
Key contributions
- Uses Bernstein polynomials for nonparametric isotropic covariance function approximation in R^infinity.
- Develops a computationally efficient sieve maximum likelihood (sML) estimator.
- Establishes consistency of the proposed sML estimator under an increasing domain regime.
- Outperforms existing methods, reducing bias and achieving lower L_infinity and L_2 norms.
Why it matters
This paper offers a robust nonparametric method for estimating isotropic covariance functions. Its sML estimator reduces bias from misspecification and improves accuracy over existing methods, crucial for spatial statistics applications.
Original Abstract
A nonparametric model using a sequence of Bernstein polynomials is constructed to approximate arbitrary isotropic covariance functions valid in $\mathbb{R}^\infty$ and related approximation properties are investigated using the popular $L_{\infty}$ norm and $L_2$ norms. A computationally efficient sieve maximum likelihood (sML) estimation is then developed to nonparametrically estimate the unknown isotropic covaraince function valid in $\mathbb{R}^\infty$. Consistency of the proposed sieve ML estimator is established under increasing domain regime. The proposed methodology is compared numerically with couple of existing nonparametric as well as with commonly used parametric methods. Numerical results based on simulated data show that our approach outperforms the parametric methods in reducing bias due to model misspecification and also the nonparametric methods in terms of having significantly lower values of expected $L_{\infty}$ and $L_2$ norms. Application to precipitation data is illustrated to showcase a real case study. Additional technical details and numerical illustrations are also made available.
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