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Spark for Data Science

You're reading from   Spark for Data Science Analyze your data and delve deep into the world of machine learning with the latest Spark version, 2.0

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Product type Paperback
Published in Sep 2016
Publisher Packt
ISBN-13 9781785885655
Length 344 pages
Edition 1st Edition
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Authors (2):
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Bikramaditya Singhal Bikramaditya Singhal
Author Profile Icon Bikramaditya Singhal
Bikramaditya Singhal
Srinivas Duvvuri Srinivas Duvvuri
Author Profile Icon Srinivas Duvvuri
Srinivas Duvvuri
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Toc

Table of Contents (12) Chapters Close

Preface 1. Big Data and Data Science – An Introduction FREE CHAPTER 2. The Spark Programming Model 3. Introduction to DataFrames 4. Unified Data Access 5. Data Analysis on Spark 6. Machine Learning 7. Extending Spark with SparkR 8. Analyzing Unstructured Data 9. Visualizing Big Data 10. Putting It All Together 11. Building Data Science Applications

Ensembles


As the name suggests, ensemble methods use multiple learning algorithms to obtain a more accurate model in terms of prediction accuracy. Usually these techniques require more computing power and make the model more complex, which makes it difficult to interpret. Let us discuss the various types of ensemble techniques available on Spark.

Random forests

A random forest is an ensemble technique for the decision trees. Before we get to random forests, let us see how it has evolved. We know that decision trees usually have high variance issues and tend to overfit the model. To address this, a concept called bagging (also known as bootstrap aggregating) was introduced. For the decision trees, the idea was to take multiple training sets (bootstrapped training sets) from the dataset and create separate decision trees out of those, and then average them out for regression trees. For the classification trees, we can take the majority vote or the most commonly occurring class from all the trees...

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