Litcius/Paper detail

K-Nearest Neighbor Estimation of Functional Nonparametric Regression Model under NA Samples

Xueping Hu, Jingya Wang, Liuliu Wang, Keming Yu

2022Axioms18 citationsDOIOpen Access PDF

Abstract

Functional data, which provides information about curves, surfaces or anything else varying over a continuum, has become a commonly encountered type of data. The k-nearest neighbor (kNN) method, as a nonparametric method, has become one of the most popular supervised machine learning algorithms used to solve both classification and regression problems. This paper is devoted to the k-nearest neighbor (kNN) estimators of the nonparametric functional regression model when the observed variables take values from negatively associated (NA) sequences. The consistent and complete convergence rate for the proposed kNN estimator is first provided. Then, numerical assessments, including simulation study and real data analysis, are conducted to evaluate the performance of the proposed method and compare it with the standard nonparametric kernel approach.

Topics & Concepts

Nonparametric regressionEstimatork-nearest neighbors algorithmNonparametric statisticsKernel regressionKernel (algebra)Regression analysisKernel density estimationRegressionComputer scienceMathematicsKernel methodArtificial intelligencePattern recognition (psychology)StatisticsSupport vector machineAlgorithmDiscrete mathematicsStatistical Methods and InferenceAdvanced Statistical Methods and ModelsBayesian Methods and Mixture Models