International audienceMotivated by promising experimental results, this paper investigates the theoretical properties of a recently proposed nonparametric estimator, called the Mutual Nearest Neighbors rule, which estimates the regression function m(x) = E[Y vertical bar X = x] as follows: first identify the k nearest neighbors of x in the sample D-n, then keep only those for which x is itself one of the k nearest neighbors, and finally take the average over the corresponding response variables. We prove that this estimator is consistent and that its rate of convergence is optimal. Since the estimate with the optimal rate of convergence depends on the unknown distribution of the observations, we also present adaptation results by data-split...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
valued random vectors, and let m(x)=E(Y lX=x) be the regression function of Y on X that has to be e...
AbstractThis paper deals with nonparametric regression estimation under arbitrary sampling with an u...
AbstractA new class of estimators is introduced for estimating the parameter (θ10, θ20) in the linea...
International audienceBagging is a simple way to combine estimates in order to improve their perform...
International audienceBagging is a simple way to combine estimates in order to improve their perform...
International audienceBagging is a simple way to combine estimates in order to improve their perform...
For a well-known class of nonparametric regression function estimators of nearest neighbor type the ...
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
AbstractLet (X, Y), (X1, Y1),…, (Xn, Yn) be i.i.d. (Rr × R)-valued random vectors with E|Y| < ∞, and...
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
Consider the nonparametric regression model Y-ni = g(x(ni)) + e(ni), 1 less than or equal to i less ...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
valued random vectors, and let m(x)=E(Y lX=x) be the regression function of Y on X that has to be e...
AbstractThis paper deals with nonparametric regression estimation under arbitrary sampling with an u...
AbstractA new class of estimators is introduced for estimating the parameter (θ10, θ20) in the linea...
International audienceBagging is a simple way to combine estimates in order to improve their perform...
International audienceBagging is a simple way to combine estimates in order to improve their perform...
International audienceBagging is a simple way to combine estimates in order to improve their perform...
For a well-known class of nonparametric regression function estimators of nearest neighbor type the ...
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
AbstractLet (X, Y), (X1, Y1),…, (Xn, Yn) be i.i.d. (Rr × R)-valued random vectors with E|Y| < ∞, and...
AbstractFor a well-known class of nonparametric regression function estimators of nearest neighbor t...
Consider the nonparametric regression model Y-ni = g(x(ni)) + e(ni), 1 less than or equal to i less ...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...