9781119600961-1119600960-Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences

Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences

ISBN-13: 9781119600961
ISBN-10: 1119600960
Edition: 1
Author: Tormod Næs, Age K. Smilde, Kristian Hovde Liland
Publication date: 2022
Publisher: John Wiley & Sons Inc
Format: Hardcover 378 pages
FREE US shipping

Book details

ISBN-13: 9781119600961
ISBN-10: 1119600960
Edition: 1
Author: Tormod Næs, Age K. Smilde, Kristian Hovde Liland
Publication date: 2022
Publisher: John Wiley & Sons Inc
Format: Hardcover 378 pages

Summary

Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences (ISBN-13: 9781119600961 and ISBN-10: 1119600960), written by authors Tormod Næs, Age K. Smilde, Kristian Hovde Liland, was published by John Wiley & Sons Inc in 2022. With an overall rating of 4.3 stars, it's a notable title among other Bioinformatics (Biological Sciences, Analytic, Chemistry) books. You can easily purchase or rent Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences (Hardcover) from BooksRun, along with many other new and used Bioinformatics books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

Multiblock Data Fusion in Statistics and Machine Learning

Explore the advantages and shortcomings of various forms of multiblock analysis, and the relationships between them, with this expert guide

Arising out of fusion problems that exist in a variety of fields in the natural and life sciences, the methods available to fuse multiple data sets have expanded dramatically in recent years. Older methods, rooted in psychometrics and chemometrics, also exist.

Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences is a detailed overview of all relevant multiblock data analysis methods for fusing multiple data sets. It focuses on methods based on components and latent variables, including both well-known and lesser-known methods with potential applications in different types of problems.

Many of the included methods are illustrated by practical examples and are accompanied by a freely available R-package. The distinguished authors have created an accessible and useful guide to help readers fuse data, develop new data fusion models, discover how the involved algorithms and models work, and understand the advantages and shortcomings of various approaches.

This book includes:

  • A thorough introduction to the different options available for the fusion of multiple data sets, including methods originating in psychometrics and chemometrics
  • Practical discussions of well-known and lesser-known methods with applications in a wide variety of data problems
  • Included, functional R-code for the application of many of the discussed methods

Perfect for graduate students studying data analysis in the context of the natural and life sciences, including bioinformatics, sensometrics, and chemometrics, Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences is also an indispensable resource for developers and users of the results of multiblock methods.

Rate this book Rate this book

We would LOVE it if you could help us and other readers by reviewing the book