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arxiv: 1808.01655 · v1 · pith:XU5RPOXInew · submitted 2018-08-05 · 🧮 math.ST · stat.TH

Dynamical multiple regression in function spaces, under kernel regressors, with ARH(1) errors

classification 🧮 math.ST stat.TH
keywords regressionunderestimatorconditionserrorsformulatedfunctiongeneralized
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A linear multiple regression model in function spaces is formulated, under temporal correlated errors. This formulation involves kernel regressors. A generalized least-squared regression parameter estimator is derived. Its asymptotic normality and strong consistency is obtained, under suitable conditions. The correlation analysis is based on a componentwise estimator of the residual autocorrelation operator. When the dependence structure of the functional error term is unknown, a plug-in generalized least-squared regression parameter estimator is formulated. Its strong-consistency is proved as well. A simulation study is undertaken to illustrate the performance of the presented approach, under different regularity conditions. An application to financial panel data is also considered.

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