Book Image

Clojure Data Analysis Cookbook

By : Eric Rochester
Book Image

Clojure Data Analysis Cookbook

By: Eric Rochester

Overview of this book

<p>Data is everywhere and it's increasingly important to be able to gain insights that we can act on. Using Clojure for data analysis and collection, this book will show you how to gain fresh insights and perspectives from your data with an essential collection of practical, structured recipes.<br /><br />"The Clojure Data Analysis Cookbook" presents recipes for every stage of the data analysis process. Whether scraping data off a web page, performing data mining, or creating graphs for the web, this book has something for the task at hand.<br /><br />You'll learn how to acquire data, clean it up, and transform it into useful graphs which can then be analyzed and published to the Internet. Coverage includes advanced topics like processing data concurrently, applying powerful statistical techniques like Bayesian modelling, and even data mining algorithms such as K-means clustering, neural networks, and association rules.</p>
Table of Contents (18 chapters)
Clojure Data Analysis Cookbook
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Index

Finding associations in data with the Apriori algorithm


One of the main goals of data mining and clustering is to learn the relationships implicit in the data. The Apriori algorithm helps to do this by teasing out those relationships into an explicit set of association rules.

In this recipe, we'll use this algorithm to extract the relationships from the mushroom dataset that we've seen several times earlier in this chapter.

Getting ready

First, we'll use the same dependencies that we did in the Loading CSV and ARFF data into Weka recipe.

We'll use just one import in our script or REPL.

(import [weka.associations Apriori])

We'll use the mushroom dataset that we introduced in the Classifying data with decision trees recipe. We'll also set the class attribute to the column indicating whether the mushroom is edible or poisonous.

(def shrooms (doto (load-arff "data/UCI/mushroom.arff")
               (.setClassIndex 22)))

Finally, we'll use the defanalysis macro from the Discovering groups of data using...