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Introduction to Multivariate Calibration
Details
This book contains several new sections that provide even more in-depth knowledge on the topics. New content on the classical least-squares model, which shows its advantages and limitations in greater detail, was added. Additionally, the book contains a new section on the inverse least-squares model, which explains how it differs from the classical model and its applications in chemometrics. Furthermore, a new chapter on principal component analysis, which covers the concept in greater detail and its applications in chemometrics, is added. This book also includes several real-world examples to help you better understand the topic. Overall, this book provides the reader with even more comprehensive knowledge on chemometrics and multivariate calibration, making it an essential resource for students and professionals alike.
Simplifies complex concepts qualitatively, minimizing mathematical jargon Balances theory with practical exercises for comprehensive learning Showcases cutting-edge multivariate calibration advancements
Autorentext
Prof. Dr. Alejandro César Olivieri obtained his B.Sc. in Industrial Chemistry from the Catholic Faculty of Chemistry and Engineering, Argentina, in 1982, and his Ph.D. from the Faculty of Biochemical and Pharmaceutical Sciences, University of Rosario, Argentina, in 1986. He works in the Department of Analytical Chemistry of the latter Faculty and is a fellow of the National Research Council of Argentina (CONICET). His primary research field is multivariate calibration, including first- and higher-order models, analytical figures of merit, and software development.
Inhalt
- Chemometrics and Multivariate Calibration.- 2. The Classical Least-Squares Model.- 3. The Inverse Least-Squares Model.- 4. Principal Component Analysis.- 5. Principal Component Regression.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783031641435
- Lesemotiv Verstehen
- Genre Chemistry
- Auflage 24002 A. Second Edition 2024
- Anzahl Seiten 324
- Herausgeber Springer International Publishing
- Größe H241mm x B160mm x T22mm
- Jahr 2024
- EAN 9783031641435
- Format Fester Einband
- ISBN 978-3-031-64143-5
- Veröffentlichung 16.07.2024
- Titel Introduction to Multivariate Calibration
- Autor Alejandro C. Olivieri
- Untertitel A Practical Approach
- Gewicht 711g
- Sprache Englisch