Title :
Rate Distortion and Denoising of Individual Data Using Kolmogorov Complexity
Author :
Vereshchagin, Nikolai K. ; Vit??nyi, Paul M B
Author_Institution :
Dept. of Math. Logic & Theor. of Algorithms, Moscow State Univ., Moscow, Russia
fDate :
7/1/2010 12:00:00 AM
Abstract :
We examine the structure of families of distortion balls from the perspective of Kolmogorov complexity. Special attention is paid to the canonical rate-distortion function of a source word which returns the minimal Kolmogorov complexity of all distortion balls containing that word subject to a bound on their cardinality. This canonical rate-distortion function is related to the more standard algorithmic rate-distortion function for the given distortion measure. Examples are given of list distortion, Hamming distortion, and Euclidean distortion. The algorithmic rate-distortion function can behave differently from Shannon´s rate-distortion function. To this end, we show that the canonical rate-distortion function can and does assume a wide class of shapes (unlike Shannon´s); we relate low algorithmic mutual information to low Kolmogorov complexity (and consequently suggest that certain aspects of the mutual information formulation of Shannon´s rate-distortion function behave differently than would an analogous formulation using algorithmic mutual information); we explore the notion that low Kolmogorov complexity distortion balls containing a given word capture the interesting properties of that word (which is hard to formalize in Shannon´s theory) and this suggests an approach to denoising.
Keywords :
nonlinear distortion; rate distortion theory; signal denoising; Euclidean distortion; Hamming distortion; Kolmogorov complexity; Shannon rate distortion function; canonical rate distortion function; denoising; list distortion; Distortion measurement; Frequency; Information analysis; Measurement standards; Mutual information; Noise reduction; Rate distortion theory; Rate-distortion; Region 8; Shape; Algorithmic rate distortion; Kolmogorov complexity; characterization; denoising; distortion families; fitness of destination words; individual data; rate distortion; shapes of curves;
Journal_Title :
Information Theory, IEEE Transactions on
Conference_Location :
7/1/2010 12:00:00 AM
DOI :
10.1109/TIT.2010.2048491