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Strongly universally consistent nonparametric regression and classification with privatised data

31 October 2020
Thomas B. Berrett
László Gyorfi
Harro Walk
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Abstract

In this paper we revisit the classical problem of nonparametric regression, but impose local differential privacy constraints. Under such constraints, the raw data (X1,Y1),…,(Xn,Yn)(X_1,Y_1),\ldots,(X_n,Y_n)(X1​,Y1​),…,(Xn​,Yn​), taking values in Rd×R\mathbb{R}^d \times \mathbb{R}Rd×R, cannot be directly observed, and all estimators are functions of the randomised output from a suitable privacy mechanism. The statistician is free to choose the form of the privacy mechanism, and here we add Laplace distributed noise to a discretisation of the location of a feature vector XiX_iXi​ and to the value of its response variable YiY_iYi​. Based on this randomised data, we design a novel estimator of the regression function, which can be viewed as a privatised version of the well-studied partitioning regression estimator. The main result is that the estimator is strongly universally consistent. Our methods and analysis also give rise to a strongly universally consistent binary classification rule for locally differentially private data.

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