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Spark Cookbook

You're reading from   Spark Cookbook With over 60 recipes on Spark, covering Spark Core, Spark SQL, Spark Streaming, MLlib, and GraphX libraries this is the perfect Spark book to always have by your side

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Product type Paperback
Published in Jul 2015
Publisher
ISBN-13 9781783987061
Length 226 pages
Edition 1st Edition
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Author (1):
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Rishi Yadav Rishi Yadav
Author Profile Icon Rishi Yadav
Rishi Yadav
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Table of Contents (14) Chapters Close

Preface 1. Getting Started with Apache Spark 2. Developing Applications with Spark FREE CHAPTER 3. External Data Sources 4. Spark SQL 5. Spark Streaming 6. Getting Started with Machine Learning Using MLlib 7. Supervised Learning with MLlib – Regression 8. Supervised Learning with MLlib – Classification 9. Unsupervised Learning with MLlib 10. Recommender Systems 11. Graph Processing Using GraphX 12. Optimizations and Performance Tuning Index

Dimensionality reduction with singular value decomposition

Often, the original dimensions do not represent data in the best way possible. As we saw in PCA, you can, sometimes, project the data to fewer dimensions and still retain most of the useful information.

Sometimes, the best approach is to align dimensions along the features that exhibit most of the variations. This approach helps to eliminate dimensions that are not representative of the data.

Let's look at the following figure again, which shows the best-fit line on two dimensions:

Dimensionality reduction with singular value decomposition

The projection line shows the best approximation of the original data with one dimension. If we take the points where the gray line is intersecting with the black line and isolates the black line, we will have a reduced representation of the original data with as much variation retained as possible, as shown in the following figure:

Dimensionality reduction with singular value decomposition

Let's draw a line perpendicular to the first projection line, as shown in the following figure:

Dimensionality reduction with singular value decomposition

This line captures...

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