Book Image

Statistics for Data Science

Book Image

Statistics for Data Science

Overview of this book

Data science is an ever-evolving field, which is growing in popularity at an exponential rate. Data science includes techniques and theories extracted from the fields of statistics; computer science, and, most importantly, machine learning, databases, data visualization, and so on. This book takes you through an entire journey of statistics, from knowing very little to becoming comfortable in using various statistical methods for data science tasks. It starts off with simple statistics and then move on to statistical methods that are used in data science algorithms. The R programs for statistical computation are clearly explained along with logic. You will come across various mathematical concepts, such as variance, standard deviation, probability, matrix calculations, and more. You will learn only what is required to implement statistics in data science tasks such as data cleaning, mining, and analysis. You will learn the statistical techniques required to perform tasks such as linear regression, regularization, model assessment, boosting, SVMs, and working with neural networks. By the end of the book, you will be comfortable with performing various statistical computations for data science programmatically.
Table of Contents (19 chapters)
Title Page
Credits
About the Author
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Chapter 4. Data Mining and the Database Developer

This chapter introduces the data developer to mining (not to be confused with querying) data, providing an understanding of exactly what data mining is and why it is an integral part of data science.

We'll provide working examples to help the reader feel comfortable using R for the most common statistical data mining methods: dimensional reduction, frequent patterns, and sequences.

In this chapter, we've broken things into the following topics:

  • Definition and purpose of data mining
  • Preparing the developer for data mining rather than data querying
  • Using R for dimensional reduction, frequent patterns, and sequence mining