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Python Object-Oriented Programming

You're reading from   Python Object-Oriented Programming Build robust and maintainable object-oriented Python applications and libraries

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Product type Paperback
Published in Jul 2021
Publisher Packt
ISBN-13 9781801077262
Length 714 pages
Edition 4th Edition
Languages
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Author (1):
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Dusty Phillips Dusty Phillips
Author Profile Icon Dusty Phillips
Dusty Phillips
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Toc

Table of Contents (17) Chapters Close

Preface 1. Object-Oriented Design 2. Objects in Python FREE CHAPTER 3. When Objects Are Alike 4. Expecting the Unexpected 5. When to Use Object-Oriented Programming 6. Abstract Base Classes and Operator Overloading 7. Python Data Structures 8. The Intersection of Object-Oriented and Functional Programming 9. Strings, Serialization, and File Paths 10. The Iterator Pattern 11. Common Design Patterns 12. Advanced Design Patterns 13. Testing Object-Oriented Programs 14. Concurrency 15. Other Books You May Enjoy
16. Index

Case study

We'll return to some material from an earlier chapter and apply some careful testing to be sure we've got a good, workable implementation. Back in Chapter 3, When Objects Are Alike, we looked at the distance computations that are part of the k-nearest neighbors classifier. In that chapter, we looked at several computations that produced slightly different results:

  • Euclidean distance: This is the direct line from one sample to another.
  • Manhattan distance: This follows streets-and-avenues around a grid (like the city of Manhattan), adding up the steps required along a series of straight-line paths.
  • Chebyshev distance: This is the largest of the streets-and-avenues distances.
  • Sorensen distance: This is a variation of the Manhattan distance that weights nearby steps more heavily than distant steps. It tends to magnify small distances, making more subtle discriminations.

These algorithms all produce distinct results...

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