Interpretability for Industry 4.0 : Statistical and Machine Learning Approaches

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  • © 2022

Overview

  • Gives an introduction to interpretability in statistical and machine learning approaches for Industry 4.0
  • Provides different views in connection with explainability, generalizability and sensitivity analysis
  • Illuminates interpretability via random forests and flexible generalized additive models

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About this book

This volume provides readers with a compact, stimulating and multifaceted introduction to interpretability, a key issue for develo** insightful statistical and machine learning approaches as well as for communicating modelling results in business and industry.

Different views in the context of Industry 4.0 are offered in connection with the concepts of explainability of machine learning tools, generalizability of model outputs and sensitivity analysis. Moreover, the book explores the integration of Artificial Intelligence and robust analysis of variance for big data mining and monitoring in Additive Manufacturing, and sheds new light on interpretability via random forests and flexible generalized additive models together with related software resources and real-world examples.

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Table of contents (4 chapters)

Editors and Affiliations

  • University of Naples Federico II, Naples, Italy

    Antonio Lepore, Biagio Palumbo

  • University Paris-Saclay, Orsay, France

    Jean-Michel Poggi

About the editors

Antonio Lepore is an Associate Professor of Statistics for Experimental and Technological Research (SECS-S/02) in the Department of Industrial Engineering of the University of Naples Federico II.

His research interests and publications in international journals focus on the use of statistical methods for the analysis and monitoring of functional data aimed at the interpretation of complex data coming from high-frequency multi-sensor data acquisition systems.

He is a member of the ENBIS (European Network for Business and Industrial Statistics) and SIS (the Italian Statistical Society).


Biagio Palumbo is an Associate Professor of Statistics for Experimental and Technological Research (SECS-S/02) in the Department of Industrial Engineering of the University of Naples Federico II and President Elect of the European Network for Business and Industrial Statistics (ENBIS).

His research interests are in interpretable statistical learning techniques for industrial engineering and, in particular, for the monitoring of complex data coming from high-frequency multi-sensor acquisition systems and for optimization of manufacturing processes.

He is member of the Italian Statistical Society, the American Society for Quality (ASQ), and the Italian Association of Mechanical Technology.


Jean-Michel Poggi is a Professor of Statistics at Université Paris Cité and a member of the Lab. Maths Orsay (LMO) at Université Paris-Saclay, in France.

His research interests are in nonparametric time series, wavelets, tree-based methods (CART, Random Forests, Boosting) and applied statistics. His work combines theoretical and practical contributions with industrial applications (mainly environment and energy) and software development.

He is Associate Editor of three journals: the Journal of Statistical Software (JSS), Advances in Data Analysis and Classification (ADAC) and the Journal of Data Science, Statistics, and Visualisation (JDSSV).

He is President of the European Network for Business and Industrial Statistics (ENBIS).

 

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