Title :
Recursive partitioning to reduce distortion
Author :
Nobel, Andrew B.
Author_Institution :
Dept. of Stat., North Carolina Univ., Chapel Hill, NC, USA
fDate :
7/1/1997 12:00:00 AM
Abstract :
Adaptive partitioning of a multidimensional feature space plays a fundamental role in the design of data-compression schemes. Most partition-based design methods operate in an iterative fashion, seeking to reduce distortion at each stage of their operation by implementing a linear split of a selected cell. The operation and eventual outcome of such methods is easily described in terms of binary tree-structured vector quantizers. This paper considers a class of simple growing procedures for tree-structured vector quantizers. Of primary interest is the asymptotic distortion of quantizers produced by the unsupervised implementation of the procedures. It is shown that application of the procedures to a convergent sequence of distributions with a suitable limit yields quantizers whose distortion tends to zero. Analogous results are established for tree-structured vector quantizers produced from stationary ergodic training data. The analysis is applicable to procedures employing both axis-parallel and oblique splitting, and a variety of distortion measures. The results of the paper apply directly to unsupervised procedures that may be efficiently implemented on a digital computer
Keywords :
adaptive signal processing; convergence of numerical methods; recursive estimation; tree data structures; vector quantisation; adaptive partitioning; asymptotic distortion; axis-parallel splitting; binary tree structured vector quantizers; convergent sequence; data compression; digital computer; distortion measures; distortion reduction; distributions; growing procedures; multidimensional feature space; oblique splitting; recursive partitioning; stationary ergodic training data; unsupervised implementation; unsupervised procedures; Biomedical imaging; Data analysis; Data compression; Design methodology; Distortion measurement; Iterative methods; Multidimensional systems; Partitioning algorithms; Training data; Vectors;
Journal_Title :
Information Theory, IEEE Transactions on