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Data Science Algorithms in a Week

You're reading from   Data Science Algorithms in a Week Top 7 algorithms for scientific computing, data analysis, and machine learning

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Product type Paperback
Published in Oct 2018
Publisher Packt
ISBN-13 9781789806076
Length 214 pages
Edition 2nd Edition
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Authors (2):
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David Toth David Toth
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David Toth
David Natingga David Natingga
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David Natingga
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Toc

Table of Contents (12) Chapters Close

Preface 1. Classification Using K-Nearest Neighbors 2. Naive Bayes FREE CHAPTER 3. Decision Trees 4. Random Forests 5. Clustering into K Clusters 6. Regression 7. Time Series Analysis 8. Python Reference 9. Statistics 10. Glossary of Algorithms and Methods in Data Science
11. Other Books You May Enjoy

Text classification – using non-Euclidean distances

We are given the following word counts relating to the keywords algorithm and computer, for documents of the classes, in the informatics and mathematics subject classifications:

Algorithm words per 1,000

Computer words per 1,000

Subject classification

153

150

Informatics

105

97

Informatics

75

125

Informatics

81

84

Informatics

73

77

Informatics

90

63

Informatics

20

0

Mathematics

33

0

Mathematics

105

10

Mathematics

2

0

Mathematics

84

2

Mathematics

12

0

Mathematics

41

42

?

 

Those documents having a high incidence of the words algorithm and computer are in the informatics class. The mathematics class happens to contain documents with a high incidence of the word algorithm in some cases, for example, a document concerned with the Euclidean algorithm from the field of number theory. But, since the mathematics class tends to be applied less than informatics in the area of algorithms, the word computer comes up less frequently in the documents.

We would like to classify a document that has 41 instances of the word algorithm per 1,000 words, and 42 instances of the word computer per 1,000 words:

Analysis

Using, for example, the 1-NN algorithm and the Manhattan or Euclidean distance would result in the document in question being assigned to the mathematics class. However, intuitively, we should instead use a different metric to measure the distance, as the document in question has a much higher incidence of the word computer than other known documents in the class of mathematics.

Another candidate metric for this problem is a metric that would measure the proportion of the for the words or the angle between the instances in documents. Instead of the angle, you could take the cosine of the angle, cos(θ), and then use the well-known dot product formula to calculate cos(θ).

Let's use a=(ax,ay), b=(bx,by). Use the following formula:

This will derive the following:

Using the cosine distance metric, you could classify the document in question to the informatics class:

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