Nonparametric regression estimation for quasi-associated Hilbertian processes

05/07/2018
by   Lahcen Douge, et al.
0

We establish the asymptotic normality of the kernel type estimator for the regression function constructed from quasi-associated data when the explanatory variable takes its values in a separable Hilbert space.

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