We analyze the behavior of nearest neighbor classification in metric spaces and provide finite-sample, distribution-dependent rates of convergence under minimal assumptions. These are more general than existing bounds, and enable us, as a by-product, to establish the universal consistency of nearest neighbor in a broader range of data spaces than was previously known. We illustrate our upper and lower bounds by introducing a new smoothness class customized for nearest neighbor classification. We find, for instance, that under the Tsybakov margin condition the convergence rate of nearest neighbor matches recently established lower bounds for nonparametric classification.
Nearest-neighbor classification assumes locally constant class conditional probabilities. This assum...
<div><p>The stability of statistical analysis is an important indicator for reproducibility, which i...
Given an n-sample of random vectors (Xi,Yi)1=i=n whose joint law is unknown, the long-standing probl...
We analyze the behavior of nearest neighbor classification in metric spaces and provide finite-sampl...
Nearest neighbor methods are a popular class of nonparametric estimators with several desirable prop...
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,...
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,...
We present the first sample compression algorithm for nearest neighbors with non-trivial performance...
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....
Nearest-neighbor classification assumes locally constant class conditional probabilities. This assum...
<div><p>The stability of statistical analysis is an important indicator for reproducibility, which i...
Given an n-sample of random vectors (Xi,Yi)1=i=n whose joint law is unknown, the long-standing probl...
We analyze the behavior of nearest neighbor classification in metric spaces and provide finite-sampl...
Nearest neighbor methods are a popular class of nonparametric estimators with several desirable prop...
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,...
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,...
We present the first sample compression algorithm for nearest neighbors with non-trivial performance...
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....
Nearest-neighbor classification assumes locally constant class conditional probabilities. This assum...
<div><p>The stability of statistical analysis is an important indicator for reproducibility, which i...
Given an n-sample of random vectors (Xi,Yi)1=i=n whose joint law is unknown, the long-standing probl...