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On Generalized Schürmann Entropy Estimators (2111.11175v1)
Published 18 Nov 2021 in cs.IT, cond-mat.stat-mech, math.IT, and physics.data-an
Abstract: We present a new class of estimators of Shannon entropy for severely undersampled discrete distributions. It is based on a generalization of an estimator proposed by T. Schuermann, which itself is a generalization of an estimator proposed by myself in arXiv:physics/0307138. For a special set of parameters they are completely free of bias and have a finite variance, something with is widely believed to be impossible. We present also detailed numerical tests where we compare them with other recent estimators and with exact results, and point out a clash with Bayesian estimators for mutual information.
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