Title :
Sparse superposition codes for Gaussian vector quantization
Author :
Kontoyiannis, Ioannis ; Rad, Kamiar Rahnama ; Gitzenis, Savvas
Author_Institution :
Dept of Inf., Athens Univ of Econ. & Bus., Athens, Greece
Abstract :
A new method is presented for the optimal or near-optimal quantization of memoryless Gaussian data. The basic construction of the codebook is motivated by related ideas in the statistical framework of sparse recovery in linear regression. Similarly, the encoding is performed by a convex-hull iterative algorithm. Preliminary theoretical results establish the optimality of the proposed algorithm for a certain range of the parameter values. Experimental results demonstrate these theoretical findings on simulated data. The performance of the proposed algorithm is compared with that of trellis-coded quantization and of the recently proposed algorithms in and. Depending on the choice of the relevant design parameters, the complexity of the encoding algorithm varies, and is generally polynomial in the data block-length. The present results are, in part, motivated by the analogous channel coding results of.
Keywords :
Gaussian distribution; channel coding; trellis codes; vector quantisation; Gaussian vector quantization; analogous channel coding; convex hull iterative algorithm; data block length; encoding; linear regression; sparse recovery; sparse superposition codes; trellis code quantization; Algorithm design and analysis; Business communication; Informatics; Iterative algorithms; Linear regression; Mechatronics; Neuroscience; Quantum computing; Statistics; Vector quantization;
Conference_Titel :
Information Theory (ITW 2010, Cairo), 2010 IEEE Information Theory Workshop on
Conference_Location :
Cairo
Print_ISBN :
978-1-4244-6372-5
DOI :
10.1109/ITWKSPS.2010.5503192