Book Image

Practical Data Science Cookbook

By : Tony Ojeda, Sean Patrick Murphy, Benjamin Bengfort, Abhijit Dasgupta
Book Image

Practical Data Science Cookbook

By: Tony Ojeda, Sean Patrick Murphy, Benjamin Bengfort, Abhijit Dasgupta

Overview of this book

<p>As increasing amounts of data is generated each year, the need to analyze and operationalize it is more important than ever. Companies that know what to do with their data will have a competitive advantage over companies that don't, and this will drive a higher demand for knowledgeable and competent data professionals.</p> <p>Starting with the basics, this book will cover how to set up your numerical programming environment, introduce you to the data science pipeline (an iterative process by which data science projects are completed), and guide you through several data projects in a step-by-step format. By sequentially working through the steps in each chapter, you will quickly familiarize yourself with the process and learn how to apply it to a variety of situations with examples in the two most popular programming languages for data analysis—R and Python.</p>
Table of Contents (18 chapters)
Practical Data Science Cookbook
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
Index

Improving the movie-rating system


We don't want to build a recommendation engine with a system that considers the likely straight-to-DVD Santa with Muscles as generally superior to Casablanca. Thus, the naïve scoring approach used previously must be improved upon and is the focus of this recipe.

Getting ready

Make sure that you have completed the previous recipes in this chapter first.

How to do it…

The following steps implement and test a new movie-scoring algorithm:

  1. Let's implement a new Bayesian movie-scoring algorithm as shown in the following function, adding it to the MovieLens class:

    def bayesian_average(self, c=59, m=3):
         """
         Reports the Bayesian average with parameters c and m.
         """
         for movieid in self.movies:
             reviews = list(r['rating'] for r in self.reviews_for_movie(movieid))
             average = ((c * m) + sum(reviews)) / 
                    float(c + len(reviews))
             yield (movieid, average, len(reviews))
    
  2. Next, we will replace the top_rated method in the...