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Horn et al., 2023 - Google Patents

Sign depth tests in multiple regression

Horn et al., 2023

Document ID
4202177742476405193
Author
Horn M
Müller C
Publication year
Publication venue
Journal of Statistical Computation and Simulation

External Links

Snippet

The recently proposed simple but powerful sign depth tests depend on the order of the residuals. While one-dimensional explanatory variables provide a natural order, there exists no canonical order for multidimensional explanatory variables. For this scenario, we present …
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Classifications

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