Skip to content

Minimum-Distortion Embedding (Foundations and Trends(r) in Machine Learning)

Minimum-Distortion Embedding (Foundations and Trends(r) in Machine Learning)

Click for full-size.

Minimum-Distortion Embedding (Foundations and Trends(r) in Machine Learning)

by Agrawal, Akshay; Ali, Alnur; Boyd, Stephen

  • New
  • Paperback
Condition
New
ISBN 10
1680838881
ISBN 13
9781680838886
Seller
Seller rating:
This seller has earned a 5 of 5 Stars rating from Biblio customers.
Kraków, Poland
2 Copies Available from This Seller
(You can add more at checkout.)
Item Price
£49.40
Or just £45.45 with a
Bibliophiles Club Membership
£12.84 Shipping to USA
Standard delivery: 14 to 20 days

More Shipping Options

Payment Methods Accepted

  • Visa
  • Mastercard
  • American Express
  • Discover
  • PayPal

About This Item

Now Publishers, 2021 8vo (23.5 cm). X, 174 pp. Laminated wrappers. "Embeddings provide concrete numerical representations of otherwise abstract items, for use in downstream tasks. For example, a biologist might look for subfamilies of related cells by clustering embedding vectors associated with individual cells, while a machine learning practitioner might use vector representations of words as features for a classification task. In this monograph the authors present a general framework for faithful embedding called minimum-distortion embedding (MDE) that generalizes the common cases in which similarities between items are described by weights or distances. The MDE framework is simple but general. It includes a wide variety of specific embedding methods, including spectral embedding, principal component analysis, multidimensional scaling, Euclidean distance problems, etc. The authors provide a detailed description of minimum-distortion embedding problem and describe the theory behind creating solutions to all aspects. They also give describe in detail algorithms for computing minimum-distortion embeddings. Finally, they provide examples on how to approximately solve many MDE problems involving real datasets, including images, co-authorship networks, United States county demographics, population genetics, and single-cell mRNA transcriptomes. An accompanying open-source software package, PyMDE, makes it easy for practitioners to experiment with different embeddings via different choices of distortion functions and constraint sets. The theory and techniques described and illustrated in this book will be of interest to researchers and practitioners working on modern-day systems that look to adopt cutting-edge artificial intelligence." (publisher's description)

Reviews

(Log in or Create an Account first!)

You’re rating the book as a work, not the seller or the specific copy you purchased!

Details

Bookseller
Leopolis Volodymyr Dmyterko PL (PL)
Bookseller's Inventory #
008553
Title
Minimum-Distortion Embedding (Foundations and Trends(r) in Machine Learning)
Author
Agrawal, Akshay; Ali, Alnur; Boyd, Stephen
Format/Binding
Soft cover
Book Condition
New New
Quantity Available
2
Binding
Paperback
ISBN 10
1680838881
ISBN 13
9781680838886
Publisher
Now Publishers
Date Published
2021
Bookseller catalogs
Mathematics;

Terms of Sale

Leopolis Volodymyr Dmyterko

Any book may be returned within 14 days for any reason. All books remain our property until paid for in full. Export of books, manuscripts, maps etc. is subject to the Act of 23 July 2003 on the protection of arts and antiquities. Orders usually ship within 3 business days via priority or express mail, with tracking.

About the Seller

Leopolis Volodymyr Dmyterko

Seller rating:
This seller has earned a 5 of 5 Stars rating from Biblio customers.
Biblio member since 2019
Kraków

About Leopolis Volodymyr Dmyterko

Specializing in mathematical sciences, Church Slavonic and Slavic books, Eastern European history, travels and topography, bibliography, history and art of the book, history of libraries and collections

Glossary

Some terminology that may be used in this description includes:

Wrappers
The paper covering on the outside of a paperback. Also see the entry for pictorial wraps, color illustrated coverings for...

This Book’s Categories

tracking-