Skip to content
Projects
Groups
Snippets
Help
This project
Loading...
Sign in / Register
Toggle navigation
tutorials
Overview
Overview
Details
Activity
Cycle Analytics
Repository
Repository
Files
Commits
Branches
Tags
Contributors
Graph
Compare
Charts
Issues
0
Issues
0
List
Board
Labels
Milestones
Merge Requests
0
Merge Requests
0
CI / CD
CI / CD
Pipelines
Jobs
Schedules
Charts
Wiki
Wiki
Snippets
Snippets
Members
Members
Collapse sidebar
Close sidebar
Activity
Graph
Charts
Create a new issue
Jobs
Commits
Issue Boards
Open sidebar
Beena Krishnamurthy
tutorials
Commits
ca999c34
Unverified
Commit
ca999c34
authored
Jun 19, 2018
by
Arham Akheel
Committed by
GitHub
Jun 19, 2018
Browse files
Options
Browse Files
Download
Email Patches
Plain Diff
Delete IntroDataVizRAndGgplot2.R
parent
5d30b58c
Show whitespace changes
Inline
Side-by-side
Showing
1 changed file
with
0 additions
and
174 deletions
+0
-174
IntroDataVizRAndGgplot2.R
...isualization with R and ggplot2/IntroDataVizRAndGgplot2.R
+0
-174
No files found.
Introduction to Data Visualization with R and ggplot2/IntroDataVizRAndGgplot2.R
deleted
100644 → 0
View file @
5d30b58c
#
# Copyright 2017 Data Science Dojo
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
#
# This R source code file corresponds to the Data Science Dojo webinar
# titled "An Introduction to Data Visualization with R and ggplot2"
#
#install.packages("ggplot2")
library
(
ggplot2
)
# Load Titanic titanicing data for analysis. Open in spreadsheet view.
titanic
<-
read.csv
(
"titanic.csv"
,
stringsAsFactors
=
FALSE
)
View
(
titanic
)
# Set up factors.
titanic
$
Pclass
<-
as.factor
(
titanic
$
Pclass
)
titanic
$
Survived
<-
as.factor
(
titanic
$
Survived
)
titanic
$
Sex
<-
as.factor
(
titanic
$
Sex
)
titanic
$
Embarked
<-
as.factor
(
titanic
$
Embarked
)
#
# We'll start our visual analysis of the data focusing on questions
# related to survival rates. Specifically, these questions will use
# the factor (i.e., categorical) variables in the data. Factor data
# is very common in the business context and ggplot2 offers many
# powerful features for visualizing factor data.
#
#
# First question - What was the survival rate?
#
# As Survived is a factor (i.e., categorical) variable, a bar chart
# is a great visualization to use.
#
ggplot
(
titanic
,
aes
(
x
=
Survived
))
+
geom_bar
()
# If you really want percentages.
prop.table
(
table
(
titanic
$
Survived
))
# Add some customization for labels and theme.
ggplot
(
titanic
,
aes
(
x
=
Survived
))
+
theme_bw
()
+
geom_bar
()
+
labs
(
y
=
"Passenger Count"
,
title
=
"Titanic Survival Rates"
)
#
# Second question - What was the survival rate by gender?
#
# We can use color to look at two aspects (i.e., dimensions)
# of the data simultaneously.
#
ggplot
(
titanic
,
aes
(
x
=
Sex
,
fill
=
Survived
))
+
theme_bw
()
+
geom_bar
()
+
labs
(
y
=
"Passenger Count"
,
title
=
"Titanic Survival Rates by Sex"
)
#
# Third question - What was the survival rate by class of ticket?
#
ggplot
(
titanic
,
aes
(
x
=
Pclass
,
fill
=
Survived
))
+
theme_bw
()
+
geom_bar
()
+
labs
(
y
=
"Passenger Count"
,
title
=
"Titanic Survival Rates by Pclass"
)
#
# Fourth question - What was the survival rate by class of ticket
# and gender?
#
# We can leverage facets to further segment the data and enable
# "visual drill-down" into the data.
#
ggplot
(
titanic
,
aes
(
x
=
Sex
,
fill
=
Survived
))
+
theme_bw
()
+
facet_wrap
(
~
Pclass
)
+
geom_bar
()
+
labs
(
y
=
"Passenger Count"
,
title
=
"Titanic Survival Rates by Pclass and Sex"
)
#
# Next, we'll move on to visualizing continuous (i.e., numeric)
# data using ggplot2. We'll explore visualizations of single
# numeric variables (i.e., columns) and also illustrate how
# ggplot2 enables visual drill-down on numeric data.
#
#
# Fifth Question - What is the distribution of passenger ages?
#
# The histogram is a staple of visualizing numeric data as it very
# powerfully communicates the distrubtion of a variable (i.e., column).
#
ggplot
(
titanic
,
aes
(
x
=
Age
))
+
theme_bw
()
+
geom_histogram
(
binwidth
=
5
)
+
labs
(
y
=
"Passenger Count"
,
x
=
"Age (binwidth = 5)"
,
title
=
"Titanic Age Distribtion"
)
#
# Sixth Question - What are the survival rates by age?
#
ggplot
(
titanic
,
aes
(
x
=
Age
,
fill
=
Survived
))
+
theme_bw
()
+
geom_histogram
(
binwidth
=
5
)
+
labs
(
y
=
"Passenger Count"
,
x
=
"Age (binwidth = 5)"
,
title
=
"Titanic Survival Rates by Age"
)
# Another great visualization for this question is the box-and-whisker
# plot.
ggplot
(
titanic
,
aes
(
x
=
Survived
,
y
=
Age
))
+
theme_bw
()
+
geom_boxplot
()
+
labs
(
y
=
"Age"
,
x
=
"Survived"
,
title
=
"Titanic Survival Rates by Age"
)
#
# Seventh Question - What is the survival rates by age when segmented
# by gender and class of ticket?
#
# A related visualization to the histogram is a density plot. Think of
# a density plot as a smoothed version of the histogram. Using ggplot2
# we can use facets to allow for visual drill-down via density plots.
#
ggplot
(
titanic
,
aes
(
x
=
Age
,
fill
=
Survived
))
+
theme_bw
()
+
facet_wrap
(
Sex
~
Pclass
)
+
geom_density
(
alpha
=
0.5
)
+
labs
(
y
=
"Age"
,
x
=
"Survived"
,
title
=
"Titanic Survival Rates by Age, Pclass and Sex"
)
# If you prefer histograms, no problem!
ggplot
(
titanic
,
aes
(
x
=
Age
,
fill
=
Survived
))
+
theme_bw
()
+
facet_wrap
(
Sex
~
Pclass
)
+
geom_histogram
(
binwidth
=
5
)
+
labs
(
y
=
"Age"
,
x
=
"Survived"
,
title
=
"Titanic Survival Rates by Age, Pclass and Sex"
)
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment