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Mastering Tableau 2019.1

You're reading from   Mastering Tableau 2019.1 An expert guide to implementing advanced business intelligence and analytics with Tableau 2019.1

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Product type Paperback
Published in Feb 2019
Publisher
ISBN-13 9781789533880
Length 558 pages
Edition 2nd Edition
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Authors (2):
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Marleen Meier Marleen Meier
Author Profile Icon Marleen Meier
Marleen Meier
David Baldwin David Baldwin
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David Baldwin
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Table of Contents (20) Chapters Close

Preface 1. Section 1: Tableau Concepts, Basics FREE CHAPTER
2. Getting Up to Speed - A Review of the Basics 3. All About Data - Getting Your Data Ready 4. Tableau Prep 5. All About Data - Joins, Blends, and Data Structures 6. All About Data - Data Densification, Cubes, and Big Data 7. Table Calculations 8. Level of Detail Calculations 9. Section 2: Advanced Calculations, Mapping, Visualizations
10. Beyond the Basic Chart Types 11. Mapping 12. Tableau for Presentations 13. Visualization Best Practices and Dashboard Design 14. Advanced Analytics 15. Improving Performance 16. Section 3: Connecting Tableau to R, Python, and Matlab
17. Interacting with Tableau Server 18. Programming Tool Integration 19. Other Books You May Enjoy

Introduction to clustering

Clustering is used to select smaller subsets of data with members sharing similar characteristics from a larger dataset. As an example, consider a marketing scenario. You have a large customer base to which you plan to send advertising material; however, cost prohibits you from sending material to every customer. Performing clustering on the dataset will return groupings of customers with similar characteristics. You can then survey the results and choose a target group.

Major methods for clustering include hierarchical and K-means. Hierarchical clustering is more thorough and thus more time-consuming. It generates a series of models that range from 1, which includes all data points, to n, where each data point is an individual model. K-means clustering is a quicker method in which the user or another function defines the number of clusters. For example...

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