Book Image

R Programming By Example

By : Omar Trejo Navarro
Book Image

R Programming By Example

By: Omar Trejo Navarro

Overview of this book

R is a high-level statistical language and is widely used among statisticians and data miners to develop analytical applications. Often, data analysis people with great analytical skills lack solid programming knowledge and are unfamiliar with the correct ways to use R. Based on the version 3.4, this book will help you develop strong fundamentals when working with R by taking you through a series of full representative examples, giving you a holistic view of R. We begin with the basic installation and configuration of the R environment. As you progress through the exercises, you'll become thoroughly acquainted with R's features and its packages. With this book, you will learn about the basic concepts of R programming, work efficiently with graphs, create publication-ready and interactive 3D graphs, and gain a better understanding of the data at hand. The detailed step-by-step instructions will enable you to get a clean set of data, produce good visualizations, and create reports for the results. It also teaches you various methods to perform code profiling and performance enhancement with good programming practices, delegation, and parallelization. By the end of this book, you will know how to efficiently work with data, create quality visualizations and reports, and develop code that is modular, expressive, and maintainable.
Table of Contents (12 chapters)

Reducing dimensionality with SVD

As we have seen in the previous section, the dimensionality course in our data was amplified due to the n-gram technique. We would like to be able to use n-grams to bring back word ordering into our DFM, but we would like to reduce the feature space at the same time. To accomplish this, we can use a number of different dimensionality reduction techniques. In this case, we will show how to use the SVD.

The SVD helps us compress the data by using it's singular vectors instead of the original features. The math behind the technique is out of the scope of the book, but we encourage you to look at Meyer's, Matrix Analysis & Applied Linear Algebra, 2000. Basically, you can think of the singular vectors as the important directions in the data, so instead of using our normal axis, we can use these singular vectors in a transformed space where...