Book Image

The Unsupervised Learning Workshop

By : Aaron Jones, Christopher Kruger, Benjamin Johnston
Book Image

The Unsupervised Learning Workshop

By: Aaron Jones, Christopher Kruger, Benjamin Johnston

Overview of this book

Do you find it difficult to understand how popular companies like WhatsApp and Amazon find valuable insights from large amounts of unorganized data? The Unsupervised Learning Workshop will give you the confidence to deal with cluttered and unlabeled datasets, using unsupervised algorithms in an easy and interactive manner. The book starts by introducing the most popular clustering algorithms of unsupervised learning. You'll find out how hierarchical clustering differs from k-means, along with understanding how to apply DBSCAN to highly complex and noisy data. Moving ahead, you'll use autoencoders for efficient data encoding. As you progress, you’ll use t-SNE models to extract high-dimensional information into a lower dimension for better visualization, in addition to working with topic modeling for implementing natural language processing (NLP). In later chapters, you’ll find key relationships between customers and businesses using Market Basket Analysis, before going on to use Hotspot Analysis for estimating the population density of an area. By the end of this book, you’ll be equipped with the skills you need to apply unsupervised algorithms on cluttered datasets to find useful patterns and insights.
Table of Contents (11 chapters)
Preface

Summary

When faced with the task of extracting information from an as yet unseen large collection of documents, topic modeling is a great approach, as it provides insights into the underlying structure of the documents. That is, topic models find word groupings using proximity, not context.

In this chapter, we have learned how to apply two of the most common and most effective topic modeling algorithms: latent Dirichlet allocation and non-negative matrix factorization. You should now feel comfortable cleaning raw text documents using several different techniques; techniques that can be utilized in many other modeling scenarios. We continued by learning how to convert the cleaned corpus into the appropriate data structure of per-document raw word counts or word weights by applying bag-of-words models.

The main focus of the chapter was fitting the two topic models, including optimizing the number of topics, converting the output to easy-to-interpret tables, and visualizing the...