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There are 4 modules in this course
This course covers the essential exploratory techniques for summarizing data. These techniques are typically applied before formal modeling commences and can help inform the development of more complex statistical models. Exploratory techniques are also important for eliminating or sharpening potential hypotheses about the world that can be addressed by the data. We will cover in detail the plotting systems in R as well as some of the basic principles of constructing data graphics. We will also cover some of the common multivariate statistical techniques used to visualize high-dimensional data.
This week covers the basics of analytic graphics and the base plotting system in R. We've also included some background material to help you install R if you haven't done so already.
Setting Your Working Directory (Windows)•7 minutes
Setting Your Working Directory (Mac)•8 minutes
Principles of Analytic Graphics•12 minutes
Exploratory Graphs (part 1)•9 minutes
Exploratory Graphs (part 2) •5 minutes
Plotting Systems in R•10 minutes
Base Plotting System (part 1)•11 minutes
Base Plotting System (part 2)•7 minutes
Base Plotting Demonstration•17 minutes
Graphics Devices in R (part 1)•6 minutes
Graphics Devices in R (part 2)•8 minutes
6 readings•Total 60 minutes
Welcome to Exploratory Data Analysis•10 minutes
Syllabus•10 minutes
Pre-Course Survey•10 minutes
Exploratory Data Analysis with R Book•10 minutes
The Art of Data Science•10 minutes
Practical R Exercises in swirl Part 1•10 minutes
1 assignment•Total 30 minutes
Week 1 Quiz•30 minutes
5 programming assignments•Total 900 minutes
swirl Lesson 1: Principles of Analytic Graphs•180 minutes
swirl Lesson 2: Exploratory Graphs•180 minutes
swirl Lesson 3: Graphics Devices in R•180 minutes
swirl Lesson 4: Plotting Systems•180 minutes
swirl Lesson 5: Base Plotting System•180 minutes
1 peer review•Total 60 minutes
Course Project 1•60 minutes
Week 2
Module 2•17 hours to complete
Module details
Welcome to Week 2 of Exploratory Data Analysis. This week covers some of the more advanced graphing systems available in R: the Lattice system and the ggplot2 system. While the base graphics system provides many important tools for visualizing data, it was part of the original R system and lacks many features that may be desirable in a plotting system, particularly when visualizing high dimensional data. The Lattice and ggplot2 systems also simplify the laying out of plots making it a much less tedious process.
Welcome to Week 3 of Exploratory Data Analysis. This week covers some of the workhorse statistical methods for exploratory analysis. These methods include clustering and dimension reduction techniques that allow you to make graphical displays of very high dimensional data (many many variables). We also cover novel ways to specify colors in R so that you can use color as an important and useful dimension when making data graphics. All of this material is covered in chapters 9-12 of my book Exploratory Data Analysis with R.
This week, we'll look at two case studies in exploratory data analysis. The first involves the use of cluster analysis techniques, and the second is a more involved analysis of some air pollution data. How one goes about doing EDA is often personal, but I'm providing these videos to give you a sense of how you might proceed with a specific type of dataset.
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IA
5·
Reviewed on Jan 17, 2016
Very nice course, plotting data to explore and understand various features and their relationship is the key in any research domain, and this course teaches the skill required to achieve this.
E
EK
5·
Reviewed on Jun 5, 2020
Awesome course that expands on your R knowledge. Only nitpick is that some of the links don't work and the videos need an overhaul as there seem to be little to no updates since 2015/2016.
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BS
4·
Reviewed on Jun 20, 2017
The course on Exploratory Data Analysis was highly enjoyable. I used to do a lot of this sort of thing in my job, but now spend more of my time managing people. It is fun to get "hands-on" again.
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