NONASYMPTOTIC BOUNDS FOR VECTOR QUANTIZATION IN HILBERT SPACES

Citation
Clément Levrard, NONASYMPTOTIC BOUNDS FOR VECTOR QUANTIZATION IN HILBERT SPACES, Annals of statistics , 43(2), 2015, pp. 592-619
Journal title
ISSN journal
00905364
Volume
43
Issue
2
Year of publication
2015
Pages
592 - 619
Database
ACNP
SICI code
Abstract
Recent results in quantization theory show that the mean-squared expected distortion can reach a rate of convergence of O(1/n), where n is the sample size [see, e.g., IEEE Trans. Inform. Theory 60 (2014) 7279-7292 or Electron. J. Stat. 7 (2013) 1716-1746]. This rate is attained for the empirical risk minimizer strategy, if the source distribution satisfies some regularity conditions. However, the dependency of the average distortion on other parameters is not known, and these results are only valid for distributions over finite-dimensional Euclidean spaces. This paper deals with the general case of distributions over separable, possibly infinite dimensional, Hubert spaces. A condition is proposed, which may be thought of as a margin condition [see, e.g., Ann. Statist. 27 (1999) 1808-1829], under which a nonasymptotic upper bound on the expected distortion rate of the empirically optimal quantizer is derived. The dependency of the distortion on other parameters of distributions is then discussed, in particular through a minimax lower bound.