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Interpretability for Industry 4.0: Statistical and Machine Learning Approaches

Edited by Antonio Lepore (), Biagio Palumbo () and Jean-Michel Poggi ()

in Springer Books from Springer

Date: 2022
ISBN: 978-3-031-12402-0
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Chapters in this book:

Ch Chapter 1 Different Views of Interpretability
Bertrand Iooss, Ron Kenett and Piercesare Secchi
Ch Chapter 2 Model Interpretability, Explainability and Trust for Manufacturing 4.0
Bianca Maria Colosimo and Fabio Centofanti
Ch Chapter 3 Interpretability via Random Forests
Clément Bénard, Sébastien Da Veiga and Erwan Scornet
Ch Chapter 4 Interpretability in Generalized Additive Models
S. N. Wood, Y. Goude and M. Fasiolo

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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprbok:978-3-031-12402-0

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DOI: 10.1007/978-3-031-12402-0

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