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Apache Spark 2.x Machine Learning Cookbook

You're reading from   Apache Spark 2.x Machine Learning Cookbook Over 100 recipes to simplify machine learning model implementations with Spark

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781783551606
Length 666 pages
Edition 1st Edition
Languages
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Authors (5):
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Broderick Hall Broderick Hall
Author Profile Icon Broderick Hall
Broderick Hall
Meenakshi Rajendran Meenakshi Rajendran
Author Profile Icon Meenakshi Rajendran
Meenakshi Rajendran
Shuen Mei Shuen Mei
Author Profile Icon Shuen Mei
Shuen Mei
Mohammed Guller Mohammed Guller
Author Profile Icon Mohammed Guller
Mohammed Guller
Siamak Amirghodsi Siamak Amirghodsi
Author Profile Icon Siamak Amirghodsi
Siamak Amirghodsi
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Table of Contents (14) Chapters Close

Preface 1. Practical Machine Learning with Spark Using Scala FREE CHAPTER 2. Just Enough Linear Algebra for Machine Learning with Spark 3. Spark's Three Data Musketeers for Machine Learning - Perfect Together 4. Common Recipes for Implementing a Robust Machine Learning System 5. Practical Machine Learning with Regression and Classification in Spark 2.0 - Part I 6. Practical Machine Learning with Regression and Classification in Spark 2.0 - Part II 7. Recommendation Engine that Scales with Spark 8. Unsupervised Clustering with Apache Spark 2.0 9. Optimization - Going Down the Hill with Gradient Descent 10. Building Machine Learning Systems with Decision Tree and Ensemble Models 11. Curse of High-Dimensionality in Big Data 12. Implementing Text Analytics with Spark 2.0 ML Library 13. Spark Streaming and Machine Learning Library

Optimizing a quadratic cost function and finding the minima using just math to gain insight


In this recipe, we will explore the fundamental concept behind mathematical optimization using simple derivatives before introducing Gradient Descent (first order derivative) and L-BFGS, which is a Hessian free quasi-Newton method.

We will examine a sample quadratic cost/error and show how to find the or maximum with just math.

We will use both the closed form (vertex formula) and derivative method (slope) to find the minima, but we will defer to later recipes in this chapter to introduce numerical optimization techniques, such Gradient Descent and its application to regression.

How to do it...

  1. Let's assume we have a quadratic cost function and we find its minima:
  1. The cost function in statistical machine learning algorithms acts as a proxy for the level of difficulty, energy spent, or total error as we move around in our search space.

 

  1. The first thing we do is to graph the function and inspect it visually...
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