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Mastering Clojure Data Analysis

You're reading from   Mastering Clojure Data Analysis If you'd like to apply your Clojure skills to performing data analysis, this is the book for you. The example based approach aids fast learning and covers basic to advanced topics. Get deeper into your data.

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Product type Paperback
Published in May 2014
Publisher
ISBN-13 9781783284139
Length 340 pages
Edition Edition
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Author (1):
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Eric Richard Rochester Eric Richard Rochester
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Eric Richard Rochester
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Table of Contents (17) Chapters Close

Mastering Clojure Data Analysis
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
1. Network Analysis – The Six Degrees of Kevin Bacon FREE CHAPTER 2. GIS Analysis – Mapping Climate Change 3. Topic Modeling – Changing Concerns in the State of the Union Addresses 4. Classifying UFO Sightings 5. Benford's Law – Detecting Natural Progressions of Numbers 6. Sentiment Analysis – Categorizing Hotel Reviews 7. Null Hypothesis Tests – Analyzing Crime Data 8. A/B Testing – Statistical Experiments for the Web 9. Analyzing Social Data Participation 10. Modeling Stock Data Index

Using the Weka machine learning library


We're going to test a couple of machine learning algorithms that are commonly used for sentiment analysis. Some of them are implemented in the OpenNLP library. However, they do not have anything for others algorithms. So instead, we'll use the Weka machine learning library (http://www.cs.waikato.ac.nz/ml/weka/). This doesn't have the classes to tokenize or segment the data that an application in a natural language processing requires, but it does have a more complete palette of machine learning algorithms.

All of the classes in the Weka library also have a standard, consistent interface. These classes are really designed to be used from the command line, so each takes its options as an array of strings with a command-line-like syntax. For example, the array for a naive Bayesian classifier may have a flag to indicate that it should use the kernel density estimator rather than the normal distribution. This would be indicated by the -K flag being included...

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