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Discussion of “Prediction, Estimation, and Attribution” by Bradley Efron
2
Zitationen
3
Autoren
2020
Jahr
Abstract
Summary Professor Efron has presented us with a thought‐provoking paper on the relationship between prediction, estimation, and attribution in the modern era of data science. While we appreciate many of his arguments, we see more of a continuum between the old and new methodology, and the opportunity for both to improve through their synergy.
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