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arxiv: 1804.01932 · v4 · pith:UTQDIXSJnew · submitted 2018-04-05 · ⚛️ physics.data-an · cs.NA· physics.comp-ph· q-bio.QM· stat.ME

Density estimation on small datasets

classification ⚛️ physics.data-an cs.NAphysics.comp-phq-bio.QMstat.ME
keywords distributionuncertaintyaccuratelyaddressesamountapproachapproximationsbayesian
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How might a smooth probability distribution be estimated, with accurately quantified uncertainty, from a limited amount of sampled data? Here we describe a field-theoretic approach that addresses this problem remarkably well in one dimension, providing an exact nonparametric Bayesian posterior without relying on tunable parameters or large-data approximations. Strong non-Gaussian constraints, which require a non-perturbative treatment, are found to play a major role in reducing distribution uncertainty. A software implementation of this method is provided.

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