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Practical Data Analysis

You're reading from   Practical Data Analysis For small businesses, analyzing the information contained in their data using open source technology could be game-changing. All you need is some basic programming and mathematical skills to do just that.

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Product type Paperback
Published in Oct 2013
Publisher Packt
ISBN-13 9781783280995
Length 360 pages
Edition 1st Edition
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Author (1):
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Hector Cuesta Hector Cuesta
Author Profile Icon Hector Cuesta
Hector Cuesta
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Table of Contents (24) Chapters Close

Practical Data Analysis
Credits
Foreword
About the Author
Acknowledgments
About the Reviewers
www.PacktPub.com
Preface
1. Getting Started FREE CHAPTER 2. Working with Data 3. Data Visualization 4. Text Classification 5. Similarity-based Image Retrieval 6. Simulation of Stock Prices 7. Predicting Gold Prices 8. Working with Support Vector Machines 9. Modeling Infectious Disease with Cellular Automata 10. Working with Social Graphs 11. Sentiment Analysis of Twitter Data 12. Data Processing and Aggregation with MongoDB 13. Working with MapReduce 14. Online Data Analysis with IPython and Wakari Setting Up the Infrastructure Index

The algorithm


We use the list_words() function to get a list of unique words which are more than three-characters long and in lower case:

def list_words(text):
  words = []
  words_tmp = text.lower().split()
  for w in words_tmp:
    if w not in words and len(w) > 3:
      words.append(w)
  return words

Tip

For a more advanced term-document matrix, we can use Python's textmining package from https://pypi.python.org/pypi/textmining/1.0.

The training() function creates variables to store the data needed for the classification. The c_words variable is a dictionary with the unique words and its number of occurrences in the text (frequency) by category. The c_categories variable stores a dictionary of each category and its number of texts. Finally, c_text and c_total_words store the total count of texts and words respectively:

def training(texts):
  c_words ={}
  c_categories ={}
  c_texts = 0
  c_total_words =0
  #add the classes to the categories
  for t in texts:
    c_texts = c_texts + 1
 ...
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