Title :
Comparing Measures of Sparsity
Author :
Hurley, Niall ; Rickard, Scott
Author_Institution :
UCD Complex & Adaptive Syst. Lab., Univ. Coll. Dublin, Dublin, Ireland
Abstract :
Sparsity of representations of signals has been shown to be a key concept of fundamental importance in fields such as blind source separation, compression, sampling and signal analysis. The aim of this paper is to compare several commonly-used sparsity measures based on intuitive attributes. Intuitively, a sparse representation is one in which a small number of coefficients contain a large proportion of the energy. In this paper, six properties are discussed: (Robin Hood, Scaling, Rising Tide, Cloning, Bill Gates, and Babies), each of which a sparsity measure should have. The main contributions of this paper are the proofs and the associated summary table which classify commonly-used sparsity measures based on whether or not they satisfy these six propositions. Only two of these measures satisfy all six: the pq-mean with p les 1, q > 1 and the Gini index.
Keywords :
information theory; Gini index; blind source separation; compression analysis; sampling analysis; signal analysis; sparsity measures; Adaptive signal processing; Blind source separation; Cloning; Image coding; Machine learning; Sampling methods; Sea measurements; Signal analysis; Source separation; Tides; Measures of sparsity; measuring sparsity; sparse distribution; sparse representation; sparsity;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2009.2027527