Functional estimation of anisotropic covariance and autocovariance operators on the sphere

  Abstract  In this talk we present nonparametric estimators for the second-order central moments of possibly anisotropic spherical random fields, within a functional data analysis context. We consider a measurement framework where each random field among an identically distributed collection of spherical random fields is sampled at a few random directions, possibly subject to measurement error. The collection of random fields could be i.i.d. or serially dependent. Though similar setups have already been explored for random functions defined on the unit interval, the nonparametric estimators proposed in the literature often rely on local polynomials, which do not readily extend to the (product) spherical setting. We therefore formulate our estimation procedure as a variational problem involving a generalized Tikhonov regularization term. Using the machinery of reproducing kernel Hilbert spaces, we establish representer theorems that fully characterize the form of our estimators. We determine their uniform rates of convergence as the number of random fields diverges, both for the dense (increasing number of spatial samples) and sparse (bounded number of spatial samples) regimes. A simulation study and a preliminary exploration of a real dataset of ocean temperatures will be also discussed. Joint work with Julien Fageot, Matthieu Simeoni and Victor M. Panaretos.   In allegato la locandina con l'abstract e i riferimenti per seguire il seminario online e in presenza    
Relatore: 
Alessia Caponera
Affiliazione Relatore: 
Dipartimento di Economia, Metodi Quantitativi e Strategie di Impresa (DEMS) Università di Milano - Bicocca.
Data: 
31/03/2023 - 12:00
Luogo: 
[A distanza: Room 24 (CU002) In presenza: https://uniroma1.zoom.us/j/86881977368?pwd=SWRFc VFjMDZTa0lXZk05TE1zNm5adz09 Passcode: 432940]