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Machine Learning From The Classics To Deep Networks Transformers And Diffusion Models Third Edition 3rd Edition Sergios Theodoridis

  • SKU: BELL-231243742
Machine Learning From The Classics To Deep Networks Transformers And Diffusion Models Third Edition 3rd Edition Sergios Theodoridis
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Machine Learning From The Classics To Deep Networks Transformers And Diffusion Models Third Edition 3rd Edition Sergios Theodoridis instant download after payment.

Publisher: Academic Press
File Extension: PDF
File size: 21.42 MB
Pages: 1220
Author: Sergios Theodoridis
ISBN: 9780443292385, 0443292388
Language: English
Year: 2025
Edition: 3
Volume: 1

Product desciption

Machine Learning From The Classics To Deep Networks Transformers And Diffusion Models Third Edition 3rd Edition Sergios Theodoridis by Sergios Theodoridis 9780443292385, 0443292388 instant download after payment.

Machine Learning: From the Classics to Deep Networks, Transformers, and Diffusion Models, Third Edition presents the most updated information on topics including mean square, least squares, maximum likelihood methods, ridge regression, Bayesian decision theory classification, logistic regression, and decision trees. It then progresses to more recent techniques, covering sparse modeling methods, learning in reproducing kernel Hilbert spaces and support vector machines, Bayesian inference, with a focus on the EM algorithm and its approximate inference variational versions, Monte Carlo methods, probabilistic graphical models focusing on Bayesian networks, hidden Markov models and particle filtering. In addition, dimensionality reduction and latent variables modeling are also considered in-depth. This palette of techniques concludes with an extended chapter on neural networks and deep learning architectures. Finally, the book covers the fundamentals of statistical parameter estimation, Wiener and Kalman filtering, convexity and convex optimization, including a chapter on stochastic approximation and the gradient descent family of algorithms, presenting related online learning techniques as well as concepts and algorithmic versions for distributed optimization.

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