Back to Exploratory Data Analysis
Johns Hopkins University

Exploratory Data Analysis

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.

Status: Unsupervised Learning
Status: Data Visualization Software
Course56 hours

Featured reviews

IA

5.0Reviewed 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.

NP

5.0Reviewed May 23, 2019

Amazing! Learing so much how to explore the data for the first time. This is a must do for anyone who wants to be a data scientist. Now I can use ggplot without any trouble. Thanks!

LS

4.0Reviewed Oct 31, 2019

Good introduction. The swirl exercises kind of reproduce the lectures though- felt like it might not have been the most efficient use of time to go over the exact same example again.

RS

4.0Reviewed Feb 13, 2017

Nice course, but too much focus on "R" as a tool.... Industries don't use R as much... The course must be made more generic and independent of R - understand it is not easy to do but ....

YW

5.0Reviewed Jun 5, 2017

This was incredibly useful because it gives you a feel for the datasets and tools with which to explore them. I really wasn't aware of the base and lattice plotting systems until now.

MT

5.0Reviewed Mar 26, 2016

This is a great introductory course on the topic and on R language.You will get acquainted with basic R functions which are most useful for initial statistical analysis.

BB

4.0Reviewed Mar 8, 2017

When it comes to hierarchical and K-means clustering, the theory wasn't explained clearly. When do we use U and V for what purpose? How does D come in? I'm left confused after this.

EK

5.0Reviewed 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.

MB

5.0Reviewed Mar 28, 2022

The dimension reduction technique was so robust, typically, this course detailed the critical parts regarding the data pre-processing. It is pivotal for the downstream analysis.

MS

5.0Reviewed Nov 25, 2020

This is a great course. The basics are explained very clearly and very easy to understand. I highly recommend this course for those who wish to start in Data Analyst / Data Science track.

JH

4.0Reviewed Jun 13, 2020

Great in-depth content about techniques related to exploratory data analysis and implementation in R language using R Studio. Definitely recommend this course to any aspiring data scientist!

SL

5.0Reviewed May 21, 2018

Week 3 - clustering concepts appear hard to comprehend initially. This week should first start with a practical example/use of clustering and then move on to technical

All reviews

Showing: 20 of 866

Roman
2.0
Reviewed Aug 30, 2018
Luca Rigovacca
1.0
Reviewed Jun 10, 2017
JM
3.0
Reviewed Jul 11, 2018
Dilyan Damyanov
2.0
Reviewed Feb 12, 2018
Beverly Andrews
1.0
Reviewed Sep 19, 2016
Dan Hall
2.0
Reviewed May 13, 2019
Paul Ringsted
3.0
Reviewed Mar 11, 2019
Faben Wogayehu
4.0
Reviewed Feb 4, 2019
Rok Bohinc
3.0
Reviewed May 15, 2019
Pamela Monaghan
2.0
Reviewed Jun 4, 2016
M CC
2.0
Reviewed Jan 14, 2021
Josh Hilton
1.0
Reviewed Nov 5, 2017
Eswara Kosaraju
5.0
Reviewed Jun 6, 2020
Sergey Kaptur
1.0
Reviewed May 10, 2016
omar kahil
1.0
Reviewed Oct 10, 2017
NISHANT PANIGRAHI
5.0
Reviewed Oct 5, 2017
Dale Ossip Johnson
5.0
Reviewed Oct 16, 2018
Prem Sagar
5.0
Reviewed Jun 7, 2025
Chandrakanth Chittappa
5.0
Reviewed Jun 18, 2018
Rishabh Joshi
5.0
Reviewed Aug 22, 2017