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Data Driven Model Learning for Engineers

Guillaume Mercère ()
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Guillaume Mercère: Université de Poitiers

in Springer Books from Springer

Date: 2023
ISBN: 978-3-031-31636-4
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Chapters in this book:

Ch Chapter 1 Basic Concepts of Time Series Modeling
Guillaume Mercère
Ch Chapter 2 Singular Spectrum Analysis of Univariate Time Series
Guillaume Mercère
Ch Chapter 3 Trend and Seasonality Model Learning with Least Squares
Guillaume Mercère
Ch Chapter 4 Least Squares Estimators and Residuals Analysis
Guillaume Mercère
Ch Chapter 5 Residuals Modeling with AR and ARMA Representations
Guillaume Mercère
Ch Chapter 6 A Last Illustration to Conclude
Guillaume Mercère

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DOI: 10.1007/978-3-031-31636-4

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