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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
Languages
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Author (1):
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Eric Richard Rochester Eric Richard Rochester
Author Profile Icon Eric Richard Rochester
Eric Richard Rochester
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Toc

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

Improving the results


What could we do to improve these results?

First, we should improve the test and training sets. It would be good to have multiple raters, say, have each review independently reviewed three times and use the rating that was chosen two or three times.

Most importantly, we'd like to have a larger and better test set and training set. For this type of problem, having 500 observations is really on the low end of what you can do anything useful with, and you can expect the results to improve with more observations. However, I do need to stress on the fact that more training data doesn't necessarily imply better results. It could help, but there are no guarantees.

We could also look at improving the features. We could select them more carefully, because having too many useless or unneeded features can make the classifier perform poorly. We could also select different features such as dates or information about the informants; if we had any data on them, it might be useful.

There...

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