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IPCW approach for testing independence

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journal contribution
posted on 2023-03-16, 21:20 authored by Marija Cuparić, Bojana Milošević

Here we present a novel inverse probability of censoring weighted (IPCW) adaptation of the Kochar–Gupta (KG) test of independence, in the case of bivariate randomly censored data. Three different censoring schemes are considered: one of the target variables is censored, both targeted variables are censored with the same censoring variable, and both target variables are censored with different censoring variables. The limiting properties of test statistics are explored. In order to compare the tests with a few well-known competitors in terms of powers, several resampling procedures have been utilised to approximate the null distribution. Special attention is dedicated to the comparison with a classical adaptation of the KG test related to the IPCW adaptation of U-statistics.

Funding

The authors of this work are supported by the Ministry of Science, Technological Development and Innovations of the Republic of Serbia [the contract 451-03-47/2023-01/ 200104]. The work is also supported by the European Cooperation in Science and Technology (COST) action [grant number CA21163] – Text, functional and other high-dimensional data in econometrics: New models, methods, applications (HiTEc).

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