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arxiv: 1708.08505 · v2 · pith:B2XYHVNLnew · submitted 2017-08-28 · 🧮 math.ST · stat.TH

A Note on Exponential Inequalities in Hilbert Spaces for Spatial Processes with Applications to the Functional Kernel Regression Model

classification 🧮 math.ST stat.TH
keywords spatialdependenceregressionconditionsdataexponentialfunctionalhilbert
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In this manuscript we present exponential inequalities for spatial lattice processes which take values in a separable Hilbert space and satisfy certain dependence conditions. We consider two types of dependence: spatial data under $\alpha$-mixing conditions and spatial data which satisfies a weak dependence condition introduced by Dedecker and Prieur [2005]. We demonstrate their usefulness in the functional kernel regression model of Ferraty and Vieu [2004] where we study uniform consistency properties of the estimated regression operator on increasing subsets of the underlying function space.

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