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Author:
Nicole A. Lazar
 
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Radical and Not-So-Radical Principles and Practices: Discussion of Meng
Ronald L. Wasserstein
Allen L. Schirm
Nicole A. Lazar
https://doi.org/10.51387/22-NEJSDS6A
Pub. online:
25 Oct 2022
Type:
Statistical Methodology
Open Access
Journal:
The New England Journal of Statistics in Data Science
Volume 1, Issue 1 (2023), pp. 35–38
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Abstract
We highlight points of agreement between Meng’s suggested principles and those proposed in our 2019 editorial in
The American Statistician
. We also discuss some questions that arise in the application of Meng’s principles in practice.
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AMS -- Americal Mathematical Society
APA -- American Psychological Association 6th ed.
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