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Similarity of samples and trimming

Abstract: We say that two probabilities are similar at level a if they are contaminated versions (up to an a fraction) of the same common probability. We show how this model is related to minimal distances between sets of trimmed probabilities. Empirical versions turn out to present an overfitting effect in the sense that trimming beyond the similarity level results in trimmed samples that are closer than expected to each other. We show how this can be combined with a bootstrap approach to assess similarity from two data samples.

 Authorship: Álvarez-Esteban P., Del Barrio E., Cuesta-Albertos J., Matrán C.,

 Fuente: Bernoulli, 2012, 18(2), 606-634

 Publisher: International Statistical Institute; Chapman and Hall

 Publication date: 01/05/2012

 No. of pages: 29

 Publication type: Article

 DOI: 10.3150/11-BEJ351

 ISSN: 1350-7265,1573-9759

 Spanish project: MTM2008-06067-C02-01

 Publication Url: https://doi.org/10.3150/11-BEJ351

Authorship

PEDRO CESAR ALVAREZ ESTEBAN

EUSTASIO DEL BARRIO TELLADO

CARLOS MATRAN BEA