Book Image

Hands-On Exploratory Data Analysis with R

By : Radhika Datar, Harish Garg
Book Image

Hands-On Exploratory Data Analysis with R

By: Radhika Datar, Harish Garg

Overview of this book

Hands-On Exploratory Data Analysis with R will help you build a strong foundation in data analysis and get well-versed with elementary ways to analyze data. You will learn how to understand your data and summarize its characteristics. You'll also study the structure of your data, and you'll explore graphical and numerical techniques using the R language. This book covers the entire exploratory data analysis (EDA) process—data collection, generating statistics, distribution, and invalidating the hypothesis. As you progress through the book, you will set up a data analysis environment with tools such as ggplot2, knitr, and R Markdown, using DOE Scatter Plot and SML2010 for multifactor, optimization, and regression data problems. By the end of this book, you will be able to successfully carry out a preliminary investigation on any dataset, uncover hidden insights, and present your results in a business context.
Table of Contents (17 chapters)
Free Chapter
1
Section 1: Setting Up Data Analysis Environment
7
Section 2: Univariate, Time Series, and Multivariate Data
11
Section 3: Multifactor, Optimization, and Regression Data Problems
14
Section 4: Conclusions

Introducing and reading the dataset

This dataset is provided in the StatLib library, predicting the mpg attribute where eight of the original instances were removed because they had unknown values for the mpg attribute. The original dataset is available in the auto-mpg.data-original file on the UCI website and you can refer to it using the following link: https://archive.ics.uci.edu/ml/datasets/auto+mpg.

We will be using data available at the following link: https://github.com/PacktPublishing/Hands-On-Exploratory-Data-Analysis-with-R/tree/master/ch09.

As mentioned on their website, The data concerns city-cycle fuel consumption in miles per gallon, to be predicted in terms of three multivalued discrete, and five continuous, attributes.

This section is all about understanding the dataset and its attributes. We will carry out the following steps as we did in the previous chapters...