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Machine Learning for OpenCV

You're reading from   Machine Learning for OpenCV Intelligent image processing with Python

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Product type Paperback
Published in Jul 2017
Publisher Packt
ISBN-13 9781783980284
Length 382 pages
Edition 1st Edition
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Authors (2):
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Michael Beyeler Michael Beyeler
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Michael Beyeler
Michael Beyeler (USD) Michael Beyeler (USD)
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Michael Beyeler (USD)
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Table of Contents (13) Chapters Close

Preface 1. A Taste of Machine Learning 2. Working with Data in OpenCV and Python FREE CHAPTER 3. First Steps in Supervised Learning 4. Representing Data and Engineering Features 5. Using Decision Trees to Make a Medical Diagnosis 6. Detecting Pedestrians with Support Vector Machines 7. Implementing a Spam Filter with Bayesian Learning 8. Discovering Hidden Structures with Unsupervised Learning 9. Using Deep Learning to Classify Handwritten Digits 10. Combining Different Algorithms into an Ensemble 11. Selecting the Right Model with Hyperparameter Tuning 12. Wrapping Up

Organizing clusters as a hierarchical tree

An alternative to k-means is hierarchical clustering. One advantage of hierarchical clustering is that it allows us to organize the different clusters in a hierarchy (also known as a dendrogram), which can make it easier to interpret the results. Another useful advantage is that we do not need to specify the number of clusters upfront.

Understanding hierarchical clustering

There are two approaches to hierarchical clustering:

  • In agglomerative hierarchical clustering, we start with each data point potentially being its own cluster, and we subsequently merge the closest pair of clusters until only one cluster remains.
  • In divisive hierarchical clustering, it's the other way around...
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