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Machine Learning with Qlik Sense

You're reading from   Machine Learning with Qlik Sense Utilize different machine learning models in practical use cases by leveraging Qlik Sense

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Product type Paperback
Published in Oct 2023
Publisher Packt
ISBN-13 9781805126157
Length 242 pages
Edition 1st Edition
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Author (1):
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Hannu Ranta Hannu Ranta
Author Profile Icon Hannu Ranta
Hannu Ranta
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Table of Contents (17) Chapters Close

Preface 1. Part 1:Concepts of Machine Learning
2. Chapter 1: Introduction to Machine Learning with Qlik FREE CHAPTER 3. Chapter 2: Machine Learning Algorithms and Models with Qlik 4. Chapter 3: Data Literacy in a Machine Learning Context 5. Chapter 4: Creating a Good Machine Learning Solution with the Qlik Platform 6. Part 2: Machine learning algorithms and models with Qlik
7. Chapter 5: Setting Up the Environments 8. Chapter 6: Preprocessing and Exploring Data with Qlik Sense 9. Chapter 7: Deploying and Monitoring Machine Learning Models 10. Chapter 8: Utilizing Qlik AutoML 11. Chapter 9: Advanced Data Visualization Techniques for Machine Learning Solutions 12. Part 3: Case studies and best practices
13. Chapter 10: Examples and Case Studies 14. Chapter 11: Future Direction 15. Index 16. Other Books You May Enjoy

Clustering algorithms, decision trees, and random forests

Clustering algorithms are used for unsupervised learning tasks, which means they are used to find patterns in data without any predefined labels or categories. The goal of clustering algorithms is to group similar data points together in clusters, while keeping dissimilar data points separate.

There are several types of clustering algorithms, including K-means, hierarchical clustering, and density-based clustering. K-means is a popular clustering algorithm that works by dividing a dataset into K clusters, where K is a predefined number of clusters. Hierarchical clustering is another clustering algorithm that creates a hierarchy of clusters based on the similarity between data points. Density-based clustering algorithms, such as DBSCAN, group together data points that are closely packed together in high-density regions.

Decision trees, on the other hand, are used for supervised learning tasks, which means they are used...

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