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Apache Spark Machine Learning Blueprints

You're reading from   Apache Spark Machine Learning Blueprints Develop a range of cutting-edge machine learning projects with Apache Spark using this actionable guide

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Product type Paperback
Published in May 2016
Publisher Packt
ISBN-13 9781785880391
Length 252 pages
Edition 1st Edition
Languages
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Author (1):
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Alex Liu Alex Liu
Author Profile Icon Alex Liu
Alex Liu
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Table of Contents (13) Chapters Close

Preface 1. Spark for Machine Learning FREE CHAPTER 2. Data Preparation for Spark ML 3. A Holistic View on Spark 4. Fraud Detection on Spark 5. Risk Scoring on Spark 6. Churn Prediction on Spark 7. Recommendations on Spark 8. Learning Analytics on Spark 9. City Analytics on Spark 10. Learning Telco Data on Spark 11. Modeling Open Data on Spark Index

Model evaluation


After completing our model estimation as described in the preceding section, we need to evaluate these estimated models to see if they fit our client's criterion so that we can either move to the explanation of results or go back to some previous stage to refine our predictive models.

To perform our model evaluation, in this section, we will utilize confusion matrix numbers to assess the quality of fit for our models, and then expand to other statistics.

As always, to calculate them, we need to use our test data rather than the training data.

Confusion matrix

In R, we can produce the model's performance indices with the following code:

model$confusion

Once a cutting point is determined, the following confusion matrix is produced, which shows a good result:

Model's Performance

Predicted as Default

Predicted as NOT (Good)

Actual Default

89%

11%

Actual Not (Good)

12%

88%

For this project, the preceding table is the most important evaluation, as the company wants to increase...

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