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arxiv: 2211.03478 · v2 · pith:YCYPMOIAnew · submitted 2022-11-07 · 📊 stat.ME · astro-ph.IM· hep-ex· physics.data-an

On goodness-of-fit tests for arbitrary multivariate models

classification 📊 stat.ME astro-ph.IMhep-exphysics.data-an
keywords testsdatadistributiongoodness-of-fitmultivariatearbitrarymodelsproposed
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Goodness-of-fit tests are often used in data analysis to test the agreement of a distribution to a set of data. These tests can be used to detect an unknown signal against a known background or to set limits on a proposed signal distribution in experiments contaminated by poorly understood backgrounds. Out-of-the-box non-parametric tests that can target any proposed distribution are only available in the univariate case. In this paper, we discuss how to build goodness-of-fit tests for arbitrary multivariate distributions or multivariate data generation models.

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