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Statistical Foundations, Reasoning and Inference: For Science and Data Science (Springer Series in Statistics) 1st ed. 2021 Edition

Statistical Foundations, Reasoning and Inference: For Science and Data Science (Springer Series in Statistics) 1st ed. 2021 Edition

Statistical Foundations, Reasoning and Inference: For Science and Data Science
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  • Title Statistical Foundations, Reasoning and Inference: For Science and Data Science (Springer Series in Statistics) 1st ed. 2021 Edition
  • Binding Papeback
  • Condition New
  • Publisher Springer
  • Publication date
  • Features Illustrated
  • Bookseller's Inventory # 6384610758
  • ISBN 9783030698263
  • Quantity available 4

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Reader reviews for Statistical Foundations, Reasoning and Inference: For Science and Data Science (Springer Series in Statistics) 1st ed. 2021 Edition

From the publisher

This textbook provides a comprehensive introduction to statistical principles, concepts and methods that are essential in modern statistics and data science. The topics covered include likelihood-based inference, Bayesian statistics, regression, statistical tests and the quantification of uncertainty. Moreover, the book addresses statistical ideas that are useful in modern data analytics, including bootstrapping, modeling of multivariate distributions, missing data analysis, causality as well as principles of experimental design. The textbook includes sufficient material for a two-semester course and is intended for master's students in data science, statistics and computer science with a rudimentary grasp of probability theory. It will also be useful for data science practitioners who want to strengthen their statistics skills.

From the rear cover

This textbook provides a comprehensive introduction to statistical principles, concepts and methods that are essential in modern statistics and data science. The topics covered include likelihood-based inference, Bayesian statistics, regression, statistical tests and the quantification of uncertainty. Moreover, the book addresses statistical ideas that are useful in modern data analytics, including bootstrapping, modeling of multivariate distributions, missing data analysis, causality as well as principles of experimental design. The textbook includes sufficient material for a two-semester course and is intended for master's students in data science, statistics and computer science with a rudimentary grasp of probability theory. It will also be useful for data science practitioners who want to strengthen their statistics skills.

About the author

Gran Kauermann is a Professor of Statistics at the Department of Statistics and Chair of the Elite Master's Program in Data Science at the LMU Munich, Germany. He is a recognized expert in applied statistics. He previously served as Editor-in-Chief of AStA Advances in Statistical Analysis, a journal of the German Statistical Society.

Helmut Kchenhoff is a Professor of Statistics at the Department of Statistics and Head of the Statistical Consulting Unit (StaBLab) at the LMU Munich, Germany. He has extensive experience in working on practical statistical projects in science and industry. His teaching focuses on practical work, where students engage in practical projects with real-world problems.

Christian Heumann is a Professor at the Department of Statistics, LMU Munich, Germany, where he teaches students in both the Bachelor's and Master's programs. His research interests include statistical modeling, computational statistics and methods for missing data, also in connection with causal inference. Recently, he has begun exploring statistical methods in natural language processing.


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