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Mathematics of Machine Learning
book

Mathematics of Machine Learning

by Tivadar Danka
May 2025
Intermediate to advanced
730 pages
20h 14m
English
Packt Publishing
Content preview from Mathematics of Machine Learning

7 Matrix Factorizations

One of the recurring thoughts in this book is that problem-solving is about finding the best representations of your objects of study. Say linear transformations of a vector space are represented by matrices. Studying one is the same as studying the other, but each perspective comes with its own set of tools. Linear transformations are geometric, while matrices are algebraic sides of the same coin.

This thought can be applied on a smaller scale as well. Recall the LU decomposition from Chapter 6. You can think of this as another view of matrices.

Guess what: It’s not the only one. This chapter is dedicated to the three most important ones:

  • the spectral decomposition,
  • the singular value decomposition,
  • and the QR decomposition. ...
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Publisher Resources

ISBN: 9781837027873Supplemental Content