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15 Math Concepts Every Data Scientist Should Know

You're reading from   15 Math Concepts Every Data Scientist Should Know Understand and learn how to apply the math behind data science algorithms

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Product type Paperback
Published in Aug 2024
Publisher Packt
ISBN-13 9781837634187
Length 510 pages
Edition 1st Edition
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Author (1):
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David Hoyle David Hoyle
Author Profile Icon David Hoyle
David Hoyle
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Table of Contents (21) Chapters Close

Preface 1. Part 1: Essential Concepts FREE CHAPTER
2. Chapter 1: Recap of Mathematical Notation and Terminology 3. Chapter 2: Random Variables and Probability Distributions 4. Chapter 3: Matrices and Linear Algebra 5. Chapter 4: Loss Functions and Optimization 6. Chapter 5: Probabilistic Modeling 7. Part 2: Intermediate Concepts
8. Chapter 6: Time Series and Forecasting 9. Chapter 7: Hypothesis Testing 10. Chapter 8: Model Complexity 11. Chapter 9: Function Decomposition 12. Chapter 10: Network Analysis 13. Part 3: Selected Advanced Concepts
14. Chapter 11: Dynamical Systems 15. Chapter 12: Kernel Methods 16. Chapter 13: Information Theory 17. Chapter 14: Non-Parametric Bayesian Methods 18. Chapter 15: Random Matrices 19. Index 20. Other Books You May Enjoy

Exercises

Here is a series of exercises. Answers to all the exercises are given in the Jupyter Answers_to_Exercises_Chap5.ipynb notebook in the GitHub repository:

  1. For the MAP estimation code example in the text, we used the scipy.optimize.minimize function to do the optimization of the log-posterior. The minimize function has the option for the user to supply a callable function that calculates the gradient of the objective function with respect to the objective function parameters. Work out on paper the gradient of the log-posterior and implement a function that returns the gradient of the log-posterior. Re-run the MAP estimation process using scipy.optimize.minimize, but when you pass in your log-posterior gradient function, you’ll need to look at the online documentation for the scipy.optimize.minimize function to see how your callable gradient function should be passed in.
  2. The Data/coffee_or_tea.csv file in the GitHub repository contains two columns of data,...
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