Please use this identifier to cite or link to this item: https://research.matf.bg.ac.rs/handle/123456789/3231
Title: Independence testing: A new approach for mixed-type multivariate data
Authors: Bucalo Jelić, D.
Cuparić, Marija 
Milošević, Bojana 
Affiliations: Probability and Statistics 
Probability and Statistics 
Issue Date: 2025
Rank: M32
Publisher: Prague : Charles University
Related Publication(s): Workshop on Goodness-of-Fit, Change-point, and Related Topics : Book of abstracts
Conference: Workshop on Goodness-of-fit. Change-Point and Related Topics (2025 ; Prague)
Abstract: 
We address the problem of testing independence in mixed-type data settings, where components may be discrete or positive and absolutely continuous, considering both the independence between these vectors, and total independence. The tests are based on an integral and an L2 transformation of a special function of the distribution function, introduced by Barnighaus and Gaigall, which effectively characterizes the joint distribution in such complex, multivariate scenarios. The asymptotic properties of the proposed tests are established, and their practical relevance in higher-dimensional contexts is demonstrated through an extensive power study.
Description: 
Predavanje po pozivu: M. Cuparić M32
B. Milošević, D. Bucalo Jelić M34
URI: https://research.matf.bg.ac.rs/handle/123456789/3231
Appears in Collections:Research outputs

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