Publication | Open Access
NONPARAMETRIC REGRESSION ON FUNCTIONAL DATA: INFERENCE AND PRACTICAL ASPECTS
224
Citations
12
References
2007
Year
Density EstimationEngineeringMultivariate AnalysisData ScienceMachine LearningReal Random VariableNonparametric Kernel ApproachFunctional Explanatory VariableReproducing Kernel MethodPractical AspectsBiostatisticsStatistical InferencePublic HealthStatistical Learning TheoryFunctional Data AnalysisStatisticsKernel MethodSemi-nonparametric Estimation
Summary We consider the problem of predicting a real random variable from a functional explanatory variable. The problem is tackled using a nonparametric kernel approach, which has been recently adapted to this functional context. We derive theoretical results from a deep asymptotic analysis of the behaviour of the estimate, including mean squared convergence (with rates and precise evaluation of the constant terms) as well as asymptotic distribution. Practical use of these results relies on the ability to estimate these constants. Some perspectives in this direction are discussed. In particular, a functional version of wild bootstrapping ideas is proposed and used both on simulated and real functional datasets.
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