Empirical Estimation of Information Measures: A Literature Guide
Abstract
:1. Introduction
- Entropy: of a probability mass function P on a discrete set :
- Relative Entropy: of a pair of probability measures defined on the same measurable space (P and Q are known as the dominated and reference probability measures, respectively; indicates , for any event B):
- Mutual Information: of a joint probability measure :
2. Entropy: Memoryless Sources
3. Entropy: Sources with Memory
4. Differential Entropy: Memoryless Sources
5. Relative Entropy: Memoryless Sources
- Finite alphabet. In the discrete case, we can base a relative entropy estimator on the decompositionIn the memoryless case, several of the algorithms reviewed in Section 2 for entropy estimation (e.g., [40,47]) find natural generalizations for the estimation of relative entropy. As for entropy estimation, the straightforward ratio of empirical counts can be used in the plug-in approach if is negligible with respect to the number of observations. Otherwise, sample complexity can be lowered by a logarithmic factor by distorting the plug-in function; an estimator is proposed in [101], which is optimal in the minimax mean-square sense when the likelihood ratio is upper bounded by a constant that may depend on , although the algorithm can operate without prior knowledge of either the upper bound or . Another nice feature of that algorithm is that it can be modified to estimate other distance measures such as -divergence and Hellinger distance. The asymptotic (in the alphabet size) minimax mean-square error is analyzed in [102] (see also [101]) when the likelihood ratio is bounded by a function of the alphabet size, and the number of observations is also allowed to grow with .
- Continuous alphabet. By the relative entropy data processing theorem,For multidimensional densities, relative entropy estimation via k-nearest-neighbor distances [104] is more attractive than the data-dependent partition methods. This has been extended to the estimation of Rényi divergence in [105]. Earlier, Hero et al. [106] considered the estimation of Rényi divergence when one of the measures is known, using minimum spanning trees.As shown in [107], it is possible to design consistent empirical relative entropy estimators based on non-consistent density estimates.The empirical estimation of the minimum relative entropy between the unknown probability measure that generates an observed independent sequence and a given exponential family is considered in [108] with a local likelihood modeling algorithm.M-estimators for the empirical estimation of f-divergence (according to Equation (16), r-divergence with in Equation (15) is the relative entropy)A recent open-source toolbox for the empirical estimation of relative entropy (as well as many other information measures) for analog random variables can be found in [112]. Software estimating mutual information in independent component analysis can be found in [113]. Experimental results contrasting various methods can be found in [114].
6. Relative Entropy: Discrete Sources with Memory
7. Mutual Information: Memoryless Sources
Funding
Acknowledgments
Conflicts of Interest
References
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Verdú, S. Empirical Estimation of Information Measures: A Literature Guide. Entropy 2019, 21, 720. https://doi.org/10.3390/e21080720
Verdú S. Empirical Estimation of Information Measures: A Literature Guide. Entropy. 2019; 21(8):720. https://doi.org/10.3390/e21080720
Chicago/Turabian StyleVerdú, Sergio. 2019. "Empirical Estimation of Information Measures: A Literature Guide" Entropy 21, no. 8: 720. https://doi.org/10.3390/e21080720