An Integral Representation of the Logarithmic Function with Applications in Information Theory

Entropy (Basel). 2019 Dec 30;22(1):51. doi: 10.3390/e22010051.

Abstract

We explore a well-known integral representation of the logarithmic function, and demonstrate its usefulness in obtaining compact, easily computable exact formulas for quantities that involve expectations and higher moments of the logarithm of a positive random variable (or the logarithm of a sum of i.i.d. positive random variables). The integral representation of the logarithm is proved useful in a variety of information-theoretic applications, including universal lossless data compression, entropy and differential entropy evaluations, and the calculation of the ergodic capacity of the single-input, multiple-output (SIMO) Gaussian channel with random parameters (known to both transmitter and receiver). This integral representation and its variants are anticipated to serve as a useful tool in additional applications, as a rigorous alternative to the popular (but non-rigorous) replica method (at least in some situations).

Keywords: SIMO channel; differential entropy; entropy; ergodic capacity; integral representation; logarithmic expectation; multivariate Cauchy distribution; universal data compression.