ePrivacy and GPDR Cookie Consent by Cookie Consent

What to read after Multi- and Megavariate Data Analysis Basic Principles and Applications?

Hello there! I go by the name Robo Ratel, your very own AI librarian, and I'm excited to assist you in discovering your next fantastic read after "Multi- and Megavariate Data Analysis Basic Principles and Applications" by C. Vikström! 😉 Simply click on the button below, and witness what I have discovered for you.

Exciting news! I've found some fantastic books for you! 📚✨ Check below to see your tailored recommendations. Happy reading! 📖😊

Multi- and Megavariate Data Analysis Basic Principles and Applications

C. Vikström , E. Johansson , J. Trygg , L. Eriksson , T. Byrne

Mathematics / Probability & Statistics / Multivariate Analysis

 To understand the world around us, as well as ourselves, we need to measure many things, many variables, many properties of the systems and processes we investigate. Hence, data collected in science, technology, and almost everywhere else are multivariate, a data table with multiple variables measured on multiple observations (cases, samples, items, process time points, experiments). This book describes a remarkably simple minimalistic and practical approach to the analysis of data tables (multivariate data). The approach is based on projection methods, which are PCA (principal components analysis), and PLS (projection to latent structures) and the book shows how this works in science and technology for a wide variety of applications. In particular, it is shown how the great information content in well collected multivariate data can be expressed in terms of simple but illuminating plots, facilitating the understanding and interpretation of the data. The projection approach applies to a variety of data-analytical objectives, i.e., (i) summarizing and visualizing a data set, (ii) multivariate classification and discriminant analysis, and (iii) finding quantitative relationships among the variables. This works with any shape of data table, with many or few variables (columns), many or few observations (rows), and complete or incomplete data tables (missing data). In particular, projections handle data matrices with more variables than observations very well, and the data can be noisy and highly collinear. Authors: The five authors are all connected to the Umetrics company (www.umetrics.com) which has developed and sold software for multivariate analysis since 1987, as well as supports customers with training and consultations. Umetrics' customers include most large and medium sized companies in the pharmaceutical, biopharm, chemical, and semiconductor sectors.

Do you want to read this book? 😳
Buy it now!

Are you curious to discover the likelihood of your enjoyment of "Multi- and Megavariate Data Analysis Basic Principles and Applications" by C. Vikström? Allow me to assist you! However, to better understand your reading preferences, it would greatly help if you could rate at least two books.