Entropy estimates of small data sets
Abstract
Estimating entropies from limited data series is known to be a non-trivial task. Naive estimations are plagued with both systematic (bias) and statistical errors. Here, we present a new 'balanced estimator' for entropy functionals Shannon, R\'enyi and Tsallis) specially devised to provide a compromise between low bias and small statistical errors, for short data series. This new estimator out-performs other currently available ones when the data sets are small and the probabilities of the possible outputs of the random variable are not close to zero. Otherwise, other well-known estimators remain a better choice. The potential range of applicability of this estimator is quite broad specially for biological and digital data series.
Cite
@article{arxiv.0804.4561,
title = {Entropy estimates of small data sets},
author = {Juan A. Bonachela and Haye Hinrichsen and Miguel A. Munoz},
journal= {arXiv preprint arXiv:0804.4561},
year = {2008}
}
Comments
11 pages, 2 figures