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Optimal Nonparametric Inference with Two-Scale Distributional Nearest Neighbors

Author

Listed:
  • Emre Demirkaya
  • Yingying Fan
  • Lan Gao
  • Jinchi Lv
  • Patrick Vossler
  • Jingbo Wang

Abstract

The weighted nearest neighbors (WNN) estimator has been popularly used as a flexible and easy-to-implement nonparametric tool for mean regression estimation. The bagging technique is an elegant way to form WNN estimators with weights automatically generated to the nearest neighbors (Steele 2009; Biau, Cérou, and Guyader 2010); we name the resulting estimator as the distributional nearest neighbors (DNN) for easy reference. Yet, there is a lack of distributional results for such estimator, limiting its application to statistical inference. Moreover, when the mean regression function has higher-order smoothness, DNN does not achieve the optimal nonparametric convergence rate, mainly because of the bias issue. In this work, we provide an in-depth technical analysis of the DNN, based on which we suggest a bias reduction approach for the DNN estimator by linearly combining two DNN estimators with different subsampling scales, resulting in the novel two-scale DNN (TDNN) estimator. The two-scale DNN estimator has an equivalent representation of WNN with weights admitting explicit forms and some being negative. We prove that, thanks to the use of negative weights, the two-scale DNN estimator enjoys the optimal nonparametric rate of convergence in estimating the regression function under the fourth-order smoothness condition. We further go beyond estimation and establish that the DNN and two-scale DNN are both asymptotically normal as the subsampling scales and sample size diverge to infinity. For the practical implementation, we also provide variance estimators and a distribution estimator using the jackknife and bootstrap techniques for the two-scale DNN. These estimators can be exploited for constructing valid confidence intervals for nonparametric inference of the regression function. The theoretical results and appealing finite-sample performance of the suggested two-scale DNN method are illustrated with several simulation examples and a real data application.

Suggested Citation

  • Emre Demirkaya & Yingying Fan & Lan Gao & Jinchi Lv & Patrick Vossler & Jingbo Wang, 2024. "Optimal Nonparametric Inference with Two-Scale Distributional Nearest Neighbors," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 119(545), pages 297-307, January.
  • Handle: RePEc:taf:jnlasa:v:119:y:2024:i:545:p:297-307
    DOI: 10.1080/01621459.2022.2115375
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