Book Image

Hands-On Data Science with R

By : Vitor Bianchi Lanzetta, Doug Ortiz, Nataraj Dasgupta, Ricardo Anjoleto Farias
Book Image

Hands-On Data Science with R

By: Vitor Bianchi Lanzetta, Doug Ortiz, Nataraj Dasgupta, Ricardo Anjoleto Farias

Overview of this book

R is the most widely used programming language, and when used in association with data science, this powerful combination will solve the complexities involved with unstructured datasets in the real world. This book covers the entire data science ecosystem for aspiring data scientists, right from zero to a level where you are confident enough to get hands-on with real-world data science problems. The book starts with an introduction to data science and introduces readers to popular R libraries for executing data science routine tasks. This book covers all the important processes in data science such as data gathering, cleaning data, and then uncovering patterns from it. You will explore algorithms such as machine learning algorithms, predictive analytical models, and finally deep learning algorithms. You will learn to run the most powerful visualization packages available in R so as to ensure that you can easily derive insights from your data. Towards the end, you will also learn how to integrate R with Spark and Hadoop and perform large-scale data analytics without much complexity.
Table of Contents (16 chapters)

Hierarchical and k-means clustering

Cluster analyses are very flexible in terms of tasks they can perform; therefore, it has been proved to be useful in many different situations. To cite some utilities, clusters can be used to build recommenders, extract important features from data that can be used to drive insights, or further feed other models and land predictions.

This section aims to go beyond Chapter 4, KDD, Data Mining, and Text Mining. The goal here is to deepen the discussion about clusters while trying to retrieve important features from the car::Chile dataset using different techniques. Expect to see hierarchical, k-means and fuzzy clusters in this section.

All of the clusters have a huge thing in common; they are all unsupervised learning techniques. Unsupervised means that models won't target a variable during the training; there is no such thing as the dependent...