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Dimensionality Reduction In Machine Learning 1st Edition Snehashish Chakraverty

  • SKU: BELL-233185924
Dimensionality Reduction In Machine Learning 1st Edition Snehashish Chakraverty
$ 35.00 $ 45.00 (-22%)

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Dimensionality Reduction In Machine Learning 1st Edition Snehashish Chakraverty instant download after payment.

Publisher: Morgan Kaufmann
File Extension: PDF
File size: 15.39 MB
Author: Snehashish Chakraverty
ISBN: 9780443328183, 0443328188
Language: English
Year: 2025
Edition: 1

Product desciption

Dimensionality Reduction In Machine Learning 1st Edition Snehashish Chakraverty by Snehashish Chakraverty 9780443328183, 0443328188 instant download after payment.

Dimensionality Reduction in Machine Learning covers both the mathematical and programming sides of dimension reduction algorithms, comparing them in various aspects. 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. Finally, 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.

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