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The Unsupervised Learning Workshop

You're reading from   The Unsupervised Learning Workshop Get started with unsupervised learning algorithms and simplify your unorganized data to help make future predictions

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Product type Paperback
Published in Jul 2020
Publisher Packt
ISBN-13 9781800200708
Length 550 pages
Edition 1st Edition
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Authors (3):
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Benjamin Johnston Benjamin Johnston
Author Profile Icon Benjamin Johnston
Benjamin Johnston
Christopher Kruger Christopher Kruger
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Christopher Kruger
Aaron Jones Aaron Jones
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Aaron Jones
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Table of Contents (11) Chapters Close

Preface
1. Introduction to Clustering 2. Hierarchical Clustering FREE CHAPTER 3. Neighborhood Approaches and DBSCAN 4. Dimensionality Reduction Techniques and PCA 5. Autoencoders 6. t-Distributed Stochastic Neighbor Embedding 7. Topic Modeling 8. Market Basket Analysis 9. Hotspot Analysis Appendix

What Is Dimensionality Reduction?

Dimensionality reduction is an important tool in any data scientist's toolkit, and due to its wide variety of use cases, is essentially assumed knowledge within the field. So, before we can consider reducing the dimensionality and why we would want to reduce it, we must first have a good understanding of what dimensionality is. To put it simply, dimensionality is the number of dimensions, features, or variables associated with a sample of data. Often, this can be thought of as a number of columns in a spreadsheet, where each sample is on a new row, and each column describes an attribute of the sample. The following table is an example:

Figure 4.1: Two samples of data with three different features

In the preceding table, we have two samples of data, each with three independent features or dimensions. Depending on the problem being solved, or the origin of this dataset, we may want to reduce the number of dimensions per...

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