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Introduction to Machine Learning: From Math to Code [Kõva köide]

(Harvey Mudd College, California)
  • Formaat: Hardback, 668 pages, Worked examples or Exercises
  • Ilmumisaeg: 30-Sep-2025
  • Kirjastus: Cambridge University Press
  • ISBN-10: 1316519503
  • ISBN-13: 9781316519509
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  • Hind: 90,54 €
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  • Formaat: Hardback, 668 pages, Worked examples or Exercises
  • Ilmumisaeg: 30-Sep-2025
  • Kirjastus: Cambridge University Press
  • ISBN-10: 1316519503
  • ISBN-13: 9781316519509
"Explore how and why machine learning algorithms work with this self-contained, hands-on textbook for senior undergraduate and graduate students. Using Matlab and Python, it includes over 85 worked examples demonstrating how to implement algorithms, and over 75 end-of-chapter problems empowering students to develop their own code"--

Emphasizing how and why machine learning algorithms work, this introductory textbook bridges the gap between the theoretical foundations of machine learning and its practical algorithmic and code-level implementation. Over 85 thorough worked examples, in both Matlab and Python, demonstrate how algorithms are implemented and applied whilst illustrating the end result. Over 75 end-of-chapter problems empower students to develop their own code to implement these algorithms, equipping them with hands-on experience. Matlab coding examples demonstrate how a mathematical idea is converted from equations to code, and provide a jumping off point for students, supported by in-depth coverage of essential mathematics including multivariable calculus, linear algebra, probability and statistics, numerical methods, and optimization. Accompanied online by instructor lecture slides, downloadable Python code and additional appendices, this is an excellent introduction to machine learning for senior undergraduate and graduate students in Engineering and Computer Science.

Explore how and why machine learning algorithms work with this self-contained, hands-on textbook for senior undergraduate and graduate students. Using Matlab and Python, it includes over 85 worked examples demonstrating how to implement algorithms, and over 75 end-of-chapter problems empowering students to develop their own code.

Muu info

Explore how and why machine learning algorithms work with this self-contained, hands-on introduction using Matlab and Python.
Part I. Mathematical Foundations:
1. Solving Equations;
2. Unconstrained
Optimization;
3. Constrained Optimization; Part II. Regression:
4.
Bias-Variance Tradeoff and Overfitting vs Underfitting;
5. Linear Regression;
6. Nonlinear Regression;
7. Logistic and Softmax Regression;
8. Gaussian
Process Regression and Classification; Part III. Feature Extraction:
9.
Feature Selection;
10. Principal Component Analysis;
11. Variations of PCA;
12. Independent Component Analysis; Part IV. Classification:
13. Statistic
Classification;
14. Support Vector machine;
15. Clustering Analysis;
16.
Hierarchical Classifiers;
17. Biologically Inspired Networks;
18.
Perceptron-Based Networks;
19. Competition-Based Networks; Part VI.
Reinforcement Learning:
20. Introduction to Reinforcement Learning; Part VII.
Large Language Models:
21. Large Language Models; Appendix A. A Review of
Linear Algebra; Appendix B. A Review of Probability and Statistics.
Ruye Wang is an Emeritus Professor of Engineering at Harvey Mudd College, with over thirty years of experience in teaching courses in Engineering and Computer Science. Previously a Principal Investigator at the Jet Propulsion Laboratory, NASA, his research interests include image processing, computer vision, machine learning and remote sensing. He is the author of the textbook Introduction to Orthogonal Transforms (2012).