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Predictive Analytics using Rattle and Qlik Sense

You're reading from   Predictive Analytics using Rattle and Qlik Sense Create comprehensive solutions for predictive analysis using Rattle and share them with Qlik Sense

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Product type Paperback
Published in Jun 2015
Publisher
ISBN-13 9781784395803
Length 242 pages
Edition 1st Edition
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Author (1):
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Ferran Garcia Pagans Ferran Garcia Pagans
Author Profile Icon Ferran Garcia Pagans
Ferran Garcia Pagans
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Table of Contents (11) Chapters Close

Preface 1. Getting Ready with Predictive Analytics FREE CHAPTER 2. Preparing Your Data 3. Exploring and Understanding Your Data 4. Creating Your First Qlik Sense Application 5. Clustering and Other Unsupervised Learning Methods 6. Decision Trees and Other Supervised Learning Methods 7. Model Evaluation 8. Visualizations, Data Applications, Dashboards, and Data Storytelling 9. Developing a Complete Application Index

Chapter 7. Model Evaluation

In the previous chapter, we've seen how to create supervised learning methods. We divided our datasets into three subsets—training, validation, and testing. We also used the training dataset to train our models, and in this chapter, we'll use the validation dataset to measure the model performance and to compare different models.

In this chapter, we'll explore different methods for measuring the predictive power of a model.

As we've seen before, there are two kinds of predictive models: regression and classification. In a regression model, the output variable is a numeric variable; in a classification model, the output variable is a categorical variable. We'll start this chapter with cross-validation. After this, we'll measure the performance in regression methods, and then, we'll move on to classification performance.

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