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The Statistics and Calculus with Python Workshop

You're reading from   The Statistics and Calculus with Python Workshop A comprehensive introduction to mathematics in Python for artificial intelligence applications

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Product type Paperback
Published in Aug 2020
Publisher Packt
ISBN-13 9781800209763
Length 740 pages
Edition 1st Edition
Languages
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Authors (6):
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Ajinkya Sudhir Kolhe Ajinkya Sudhir Kolhe
Author Profile Icon Ajinkya Sudhir Kolhe
Ajinkya Sudhir Kolhe
Quan Nguyen Quan Nguyen
Author Profile Icon Quan Nguyen
Quan Nguyen
Marios Tsatsos Marios Tsatsos
Author Profile Icon Marios Tsatsos
Marios Tsatsos
Alexander Joseph Sarver Alexander Joseph Sarver
Author Profile Icon Alexander Joseph Sarver
Alexander Joseph Sarver
Peter Farrell Peter Farrell
Author Profile Icon Peter Farrell
Peter Farrell
Alvaro Fuentes Alvaro Fuentes
Author Profile Icon Alvaro Fuentes
Alvaro Fuentes
+2 more Show less
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Table of Contents (14) Chapters Close

Preface
1. Fundamentals of Python 2. Python's Main Tools for Statistics FREE CHAPTER 3. Python's Statistical Toolbox 4. Functions and Algebra with Python 5. More Mathematics with Python 6. Matrices and Markov Chains with Python 7. Doing Basic Statistics with Python 8. Foundational Probability Concepts and Their Applications 9. Intermediate Statistics with Python 10. Foundational Calculus with Python 11. More Calculus with Python 12. Intermediate Calculus with Python Appendix

6. Matrices and Markov Chains with Python

Activity 6.01: Building a Text Predictor Using a Markov Chain

Solution:

There are a few ways to approach this problem, and it is worth mentioning that the approach we will be taking is perhaps the easiest way in which text prediction is used. In actual practice, text predictions are far more complicated and have many other factors that affect them, which we will briefly cover at the end of the activity.

  1. We will be using the transcript of the speech given by Winston Churchill at the House of Commons after the soldiers of the Allied forces were rescued from Dunkirk during World War II. The speech by itself is worth a read and can be easily found online if you are interested.

    Note

    You can download the transcript from https://packt.live/38rZy6v .

  2. This list is stored in a text file named churchill.txt. Read through that text file:
    # Churchill's speech
    churchill = open('churchill.txt').read()
    keywords = churchill.split...
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