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Clojure for Data Science

Clojure for Data Science

By : Garner
5 (4)
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Clojure for Data Science

Clojure for Data Science

5 (4)
By: Garner

Overview of this book

The term “data science” has been widely used to define this new profession that is expected to interpret vast datasets and translate them to improved decision-making and performance. Clojure is a powerful language that combines the interactivity of a scripting language with the speed of a compiled language. Together with its rich ecosystem of native libraries and an extremely simple and consistent functional approach to data manipulation, which maps closely to mathematical formula, it is an ideal, practical, and flexible language to meet a data scientist’s diverse needs. Taking you on a journey from simple summary statistics to sophisticated machine learning algorithms, this book shows how the Clojure programming language can be used to derive insights from data. Data scientists often forge a novel path, and you’ll see how to make use of Clojure’s Java interoperability capabilities to access libraries such as Mahout and Mllib for which Clojure wrappers don’t yet exist. Even seasoned Clojure developers will develop a deeper appreciation for their language’s flexibility! You’ll learn how to apply statistical thinking to your own data and use Clojure to explore, analyze, and visualize it in a technically and statistically robust way. You can also use Incanter for local data processing and ClojureScript to present interactive visualisations and understand how distributed platforms such as Hadoop sand Spark’s MapReduce and GraphX’s BSP solve the challenges of data analysis at scale, and how to explain algorithms using those programming models. Above all, by following the explanations in this book, you’ll learn not just how to be effective using the current state-of-the-art methods in data science, but why such methods work so that you can continue to be productive as the field evolves into the future.
Table of Contents (12 chapters)
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11
Index

Slope One recommenders

Slope One recommenders are a part of a family of algorithms introduced in a 2005 paper by Daniel Lemire and Anna Maclachlan. In this chapter, we'll introduce the weighted Slope One recommender.

Note

You can read the paper introducing the Slope One recommender at http://lemire.me/fr/abstracts/SDM2005.html.

To illustrate how weighted Slope One recommendation works, let's consider the simple example of four users, labeled W, X, Y, and Z, who have rated three movies—Amadeus, Braveheart, and Casablanca. The ratings each user has provided are illustrated in the following diagram:

Slope One recommenders

As with any recommendation problem, we're looking to replace the question marks with some estimate on how the user would rate the movie: the highest predicted ratings can be used to recommend new movies to users.

Weighted Slope One is an algorithm in two steps. Firstly, we must calculate the difference between the ratings for every pair of items. Secondly, we'll use this set...

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