Title :
Quantization via Empirical Divergence Maximization
Author :
Lexa, Michael A.
Author_Institution :
Inst. of Digital Commun., Univ. of Edinburgh, Edinburgh, UK
Abstract :
Empirical divergence maximization (EDM) refers to a recently proposed strategy for estimating f-divergences and likelihood ratio functions. This paper extends the idea to empirical vector quantization where one seeks to empirically derive quantization rules that maximize the Kullback-Leibler divergence between two statistical hypotheses. We analyze the estimator´s error convergence rate leveraging Tsybakov´s margin condition and show that rates as fast as n-1 are possible, where n equals the number of training samples. We also show that the Flynn and Gray algorithm can be used to efficiently compute EDM estimates and show that they can be efficiently and accurately represented by recursive dyadic partitions. The EDM formulation have several advantages. First, the formulation gives access to the tools and results of empirical process theory that quantify the estimator´s error convergence rate. Second, the formulation provides a previously unknown derivation for the Flynn and Gray algorithm. Third, the flexibility it affords allows one to avoid a small-cell assumption common in other approaches. Finally, we illustrate the potential use of the method through an example.
Keywords :
error statistics; maximum likelihood estimation; recursive estimation; vector quantisation; EDM estimation; Flynn and Gray algorithm; Kullback-Leibler divergence; Tsybakov margin condition; empirical divergence maximization; empirical process theory; empirical vector quantization; error convergence rate; f-divergences estimation; likelihood ratio functions; quantization rules; recursive dyadic partitions; statistical hypotheses; training samples; Convergence; Partitioning algorithms; Probability distribution; Risk management; Signal processing algorithms; Vector quantization; Empirical divergence maximization; Kullback-Leibler divergence; error convergence rates; recursive dyadic partitions; vector quantization;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2217136