Fr. 70.00

Data Visualization with Category Theory and Geometry - With a Critical Analysis and Refinement of UMAP

English · Hardback

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Description

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This open access book provides a robust exposition of the mathematical foundations of data representation, focusing on two essential pillars of dimensionality reduction methods, namely geometry in general and Riemannian geometry in particular, and category theory.
Presenting a list of examples consisting of both geometric objects and empirical datasets, this book provides insights into the different effects of dimensionality reduction techniques on data representation and visualization, with the aim of guiding the reader in understanding the expected results specific to each method in such scenarios.
As a showcase, the dimensionality reduction method of Uniform Manifold Approximation and Projection (UMAP) has been used in this book, as it is built on theoretical foundations from all the areas we want to highlight here. Thus, this book also aims to systematically present the details of constructing a metric representation of a locally distorted metric space, which is essentially the problem that UMAP is trying to address, from a more general perspective. 
Explaining how UMAP fits into this broader framework, while critically evaluating the underlying ideas, this book finally introduces an alternative algorithm to UMAP. This algorithm, called IsUMap, retains many of the positive features of UMAP, while improving on some of its drawbacks.

List of contents

Chapter 1. Introduction.- Chapter 2. Illustrating UMAP on some simple data sets.- Chapter 3. Metrics and Riemannian manifolds.- Chapter 4.  Merging fuzzy simplicial sets and metric spaces: A category theoretical approach.- Chapter 5. UMAP.- Chapter 6.  IsUMap: An alternative to the UMAP embedding.

Summary

This open access book provides a robust exposition of the mathematical foundations of data representation, focusing on two essential pillars of dimensionality reduction methods, namely geometry in general and Riemannian geometry in particular, and category theory.
Presenting a list of examples consisting of both geometric objects and empirical datasets, this book provides insights into the different effects of dimensionality reduction techniques on data representation and visualization, with the aim of guiding the reader in understanding the expected results specific to each method in such scenarios.
As a showcase, the dimensionality reduction method of “Uniform Manifold Approximation and Projection” (UMAP) has been used in this book, as it is built on theoretical foundations from all the areas we want to highlight here. Thus, this book also aims to systematically present the details of constructing a metric representation of a locally distorted metric space, which is essentially the problem that UMAP is trying to address, from a more general perspective. 
Explaining how UMAP fits into this broader framework, while critically evaluating the underlying ideas, this book finally introduces an alternative algorithm to UMAP. This algorithm, called IsUMap, retains many of the positive features of UMAP, while improving on some of its drawbacks.

Product details

Authors Lukas Silvester Barth, Hannaneh Fahimi, Joharinad, Parvaneh Joharinad, Jürgen Jost, Janis Keck
Publisher Springer, Berlin
 
Languages English
Product format Hardback
Released 14.08.2025
 
EAN 9783031979729
ISBN 978-3-0-3197972-9
No. of pages 272
Dimensions 155 mm x 19 mm x 235 mm
Weight 543 g
Illustrations XIII, 272 p. 91 illus., 36 illus. in color.
Series Mathematics of Data
Subjects Natural sciences, medicine, IT, technology > Mathematics > Miscellaneous

Algebra, Open Access, data visualization, Mathematical Applications in Computer Science, Category Theory, Homological Algebra, Riemannian geometry, simplicial complexes, dimension reduction, Applied category theory, Metric realization, Merging local metrics, UMAP

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