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<i>k</i>‐Nearest neighbors local linear regression for functional and missing data at random

Mustapha Rachdi, Ali Laksaci, Zoulikha Kaid, Abbassia Benchiha, Fahimah Al-Awadhi

2020Statistica Neerlandica19 citationsDOI

Abstract

We combine the k ‐Nearest Neighbors ( k NN) method to the local linear estimation (LLE) approach to construct a new estimator (LLE‐ k NN) of the regression operator when the regressor is of functional type and the response variable is a scalar but observed with some missing at random (MAR) observations. The resulting estimator inherits many of the advantages of both approaches ( k NN and LLE methods). This is confirmed by the established asymptotic results, in terms of the pointwise and uniform almost complete consistencies, and the precise convergence rates. In addition, a numerical study (i) on simulated data, then (ii) on a real dataset concerning the sugar quality using fluorescence data, were conducted. This practical study clearly shows the feasibility and the superiority of the LLE‐ k NN estimator compared to competitive estimators.

Topics & Concepts

EstimatorPointwiseMathematicsLinear regressionMissing dataScalar (mathematics)Applied mathematicsAlgorithmStatisticsMathematical analysisGeometryStatistical Methods and InferenceAdvanced Statistical Methods and ModelsSurvey Sampling and Estimation Techniques
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