Chemometrics with R: Multivariate Data Analysis in the Natural Sciences and Life Sciences"Chemometrics with R" offers readers an accessible introduction to the world of multivariate statistics in the life sciences, providing a complete description of the general data analysis paradigm, from exploratory analysis to modeling to validation. Several more specific topics from the area of chemometrics are included in a special section. The corresponding R code is provided for all the examples in the book; scripts, functions and data are available in a separate, publicly available R package. For researchers working in the life sciences, the book can also serve as an easy-to-use primer on R. |
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Inhalt
2 | |
Part I Preliminaries | 6 |
Part II Exploratory Analysis | 40 |
Part III Modelling | 100 |
Part IV Model Inspection | 174 |
Part V Applications | 233 |
Part VI Appendices | 268 |
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Chemometrics with R: Multivariate Data Analysis in the Natural Sciences and ... Ron Wehrens Keine Leseprobe verfügbar - 2011 |
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