Книга Dimensionality Reduction in Machine Learning Snehashish Chakraverty

Dimensionality Reduction in Machine Learning

Език: Английски език
Корици: С меки корици
Издател: Elsevier Science
Наличност: Налично при издателя, по поръчка
Изпращаме след 28-34 дни
185.90 363.60 лв
Dimensionality Reduction in Machine Learning provides a comprehensive tutorial on dimension reductio...

Информация за книгата

Език
Английски език
Корици
Книга - С меки корици
Издадена
2025
страници
250
EAN
9780443328183
ISBN
0443328188
Enbook ID
46434865
Издател
Теглоt
680
Размери
191 x 235

Пълно описание

Dimensionality Reduction in Machine Learning provides a comprehensive tutorial on dimension reduction algorithms as the first step of the data life cycle in a machine learning project. This book covers both the mathematical and programming sides of dimension reduction algorithms and compares dimension reduction algorithms in various aspects. Dimension reduction and feature selection is the first step in nearly every machine learning project. The authors provide readers with in-depth understanding of the foundational underpinnings as well as the methods of creating and applying dimension reduction algorithms. The book is divided into four Parts, with chapters from the leading researchers and experts in the field. Part One provides an Introduction to Machine Learning and the Data Life Cycle, with chapters covering the basic concepts of Machine Learning, essential mathematics for Machine Learning, and the methods and concepts of Feature Selection. Part Two covers Linear Methods for Dimension Reduction, with chapters on Principal Component Analysis and Linear Discriminant Analysis. Part Three covers Non-Linear Methods for Dimension Reduction, with chapters on Linear Local Embedding, Multi-dimensional Scaling, and t-distributed Stochastic Neighbor Embedding. Part Four covers Deep Learning Methods for Dimension Reduction, with chapters on Feature Extraction and Deep Learning, Autoencoders, and Dimensionality reduction in deep learning through group actions. With this stepwise structure and the applied code examples, readers become able to apply dimension reduction algorithms to different types of data, including tabular, text, and image data.

  • Provides readers with a comprehensive overview of various dimension reduction algorithms, including linear methods, non-linear methods, and deep learning methods
  • Covers the implementation aspects of algorithms supported by numerous code examples
  • Compares different algorithms with each other so that the reader can understand which algorithm is suitable for his/her purpose
  • All algorithm examples in the book are supported by a Github repository which consists of full notebooks for the programming code

Може също да ви хареса

20.29 39.68 лв
10.09 19.74 лв
220.36 430.99 лв
33.50 65.52 лв
65.35 127.81 лв
18.78 36.73 лв

Krishna The Butter Bandit

MS Swetha Sundaram
22.70 44.40 лв

Siegfried

Richard Wagner
12.05 23.57 лв
15.27 29.86 лв
18.88 36.93 лв

Atoms, Molecules and Photons

Wolfgang Demtröder
134.16 262.40 лв
16.72 32.71 лв

Where's Mr Lion?

Nosy Crow Ltd
6.88 13.45 лв
55.35 108.26 лв

Sanctum

Sarah Fine
44.25 86.54 лв

INNER CHILD ORACLE

AISLING AMANDA LYNN
15.32 29.95 лв

Diablo: Book of Cain

Blizzard Entertainment
30.64 59.92 лв
5.32 10.40 лв

Wandering Stars

Tommy Orange
10.49 20.52 лв
10.49 20.52 лв

Клиенти, които купиха тази книга, купиха също

20.49 40.07 лв
21.29 41.65 лв
11.35 22.19 лв
1.55 3.04 лв
10.09 19.74 лв
23.05 45.08 лв
18.48 36.14 лв

Das Erfolgsbuch

Joseph Murphy
13.96 27.30 лв
10.74 21.01 лв

E.E.

Olga Tokarczuk
12.60 24.65 лв

Muh!

David Safier
13.06 25.53 лв
13.51 26.42 лв
23.20 45.38 лв

Beste Freunde

Manuela Georgiakaki
11.65 22.78 лв
10.29 20.13 лв
17.38 33.98 лв