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Wavelet Density and Regression Estimators for Continuous Time Functional Stationary and Ergodic Processes

Sultana Didi, Salim Bouzebda

2022Mathematics19 citationsDOIOpen Access PDF

Abstract

In this study, we look at the wavelet basis for the nonparametric estimation of density and regression functions for continuous functional stationary processes in Hilbert space. The mean integrated squared error for a small subset is established. We employ a martingale approach to obtain the asymptotic properties of these wavelet estimators. These findings are established under rather broad assumptions. All we assume about the data is that they are ergodic, but beyond that, we make no assumptions. In this paper, the mean integrated squared error findings in the independence or mixing setting were generalized to the ergodic setting. The theoretical results presented in this study are (or will be) valuable resources for various cutting-edge functional data analysis applications. Applications include conditional distribution, conditional quantile, entropy, and curve discrimination.

Topics & Concepts

MathematicsEstimatorWaveletErgodic theoryApplied mathematicsMean squared errorReproducing kernel Hilbert spaceStationary ergodic processConditional probability distributionHilbert spaceStatisticsMathematical analysisComputer scienceArtificial intelligenceInvariant measureStatistical and numerical algorithmsStatistical Methods and InferenceAdvanced Statistical Methods and Models