Python Tutorial: Plot all of your data: Bee swarm plots

DataCamp · Beginner ·🛠️ AI Tools & Apps ·6y ago

Key Takeaways

Uses Python to plot all data with bee swarm plots

Full Transcript

the histogram of county level election data was informative we learned that more counties voted for McCain than for Obama since our goal is to learn from data this is great however a major drawback of using histograms is that the same dataset can look different depending on how the bins are chosen and choice of bins is in many ways arbitrary this leads to binning bias you might interpret your plot differently for two different choices of binning an additional problem with histograms is that we are not plotting all of the data we are sweeping the data into bins and losing their actual values to remedy these problems we can make a bee swarm plot also known as a swarm plot this is best shown by example here is a bee swarm pot of the vote totals in the three swing states each point in the plot represents the share of the vote that Obama got in a single County the position along the y-axis is the quantitative information the data are spread along X to make them visible but their precise location along the x axis is unimportant notably we no longer have any binning bias and all data are displayed this plot may be conveniently generated using Seabourn a requirement is that your data are in a well-organized panda's data frame or each column is a feature and each row in observation in this case an observation is a county and the features are the state and the Democratic share of the vote to make the plot you need to specify which column gives the values for the y axis in this case the share of the vote that went to Democrat Barack Obama and the values for the x axis in this case the state and of course you need to tell it which data frame contains the data from this plot too we can clearly see that Obama got less than 50 percent of the vote in the majority of the counties in each of the three swing states this time the plot is more detailed than the histogram but without too much added visual Alexa T now it's your turn to make some bee swarm plots

Original Description

Want to learn more? Take the full course at https://learn.datacamp.com/courses/statistical-thinking-in-python-part-1 at your own pace. More than a video, you'll learn hands-on coding & quickly apply skills to your daily work. --- The histogram of county-level election data was informative. We learned that more counties voted for McCain than for Obama. Since our goal is to learn from data, this is great! However, a major drawback of using histograms is that the same data set can look different depending on how the bins are chosen. And choice of bins is in many ways arbitrary. This leads to binning bias; you might interpret your plot differently for two different choices of bin number. An additional problem with histograms is that we are not plotting all of the data. We are sweeping the data into bins, and losing their actual values. To remedy these problems we can make a bee swarm plot, also called a swarm plot. This is best shown by example. Here is a beeswarm plot of the vote totals in the three swing states. Each point in the plot represents the share of the vote Obama got in a single county. The position along the y-axis is the quantitative information. The data are spread in x to make them visible, but their precise location along the x-axis is unimportant. Notably, we no longer have any binning bias and all data are displayed. This plot may be conveniently generated using Seaborn. A requirement is that your data are in a well-organized Pandas DataFrame where each column is a feature and each row an observation. In this case, an observation is a county, and the features are state and the Democratic share of the vote. To make the plot, you need to specify which column gives the values for the y-axis, in this case the share of the vote that went to the Democrat Barack Obama, and the values for the x-axis, in this case the state. And of course, you need to tell it which DataFrame contains the data. From this plot, too, we can clearly see that Obama
Watch on YouTube ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Playlist

Uploads from DataCamp · DataCamp · 0 of 60

← Previous Next →
1 SQL Server Tutorial: Date manipulation
SQL Server Tutorial: Date manipulation
DataCamp
2 R Tutorial: Intermediate Interactive Data Visualization with plotly in R
R Tutorial: Intermediate Interactive Data Visualization with plotly in R
DataCamp
3 R Tutorial: Adding aesthetics to represent a variable
R Tutorial: Adding aesthetics to represent a variable
DataCamp
4 R Tutorial: Moving Beyond Simple Interactivity
R Tutorial: Moving Beyond Simple Interactivity
DataCamp
5 Python Tutorial: Why use ML for marketing? Strategies and use cases
Python Tutorial: Why use ML for marketing? Strategies and use cases
DataCamp
6 Python Tutorial: Preparation for modeling
Python Tutorial: Preparation for modeling
DataCamp
7 Python Tutorial: Machine Learning modeling steps
Python Tutorial: Machine Learning modeling steps
DataCamp
8 R Tutorial: The prior model
R Tutorial: The prior model
DataCamp
9 R Tutorial: Data & the likelihood
R Tutorial: Data & the likelihood
DataCamp
10 R Tutorial: The posterior model
R Tutorial: The posterior model
DataCamp
11 R Tutorial: An Introduction to plotly
R Tutorial: An Introduction to plotly
DataCamp
12 R Tutorial: Plotting a single variable
R Tutorial: Plotting a single variable
DataCamp
13 R Tutorial: Bivariate graphics
R Tutorial: Bivariate graphics
DataCamp
14 Python Tutorial: Customer Segmentation in Python
Python Tutorial: Customer Segmentation in Python
DataCamp
15 Python Tutorial: Time cohorts
Python Tutorial: Time cohorts
DataCamp
16 Python Tutorial: Calculate cohort metrics
Python Tutorial: Calculate cohort metrics
DataCamp
17 Python Tutorial: Cohort analysis visualization
Python Tutorial: Cohort analysis visualization
DataCamp
18 R Tutorial: Building Dashboards with flexdashboard
R Tutorial: Building Dashboards with flexdashboard
DataCamp
19 R Tutorial: Anatomy of a flexdashboard
R Tutorial: Anatomy of a flexdashboard
DataCamp
20 R Tutorial: Layout basics
R Tutorial: Layout basics
DataCamp
21 R Tutorial: Advanced layouts
R Tutorial: Advanced layouts
DataCamp
22 Python Tutorial: Time Series Analysis in Python
Python Tutorial: Time Series Analysis in Python
DataCamp
23 Python Tutorial: Correlation of Two Time Series
Python Tutorial: Correlation of Two Time Series
DataCamp
24 Python Tutorial: Simple Linear Regressions
Python Tutorial: Simple Linear Regressions
DataCamp
25 Python Tutorial: Autocorrelation
Python Tutorial: Autocorrelation
DataCamp
26 R Tutorial: The gapminder dataset
R Tutorial: The gapminder dataset
DataCamp
27 R Tutorial: The filter verb
R Tutorial: The filter verb
DataCamp
28 R Tutorial: The arrange verb
R Tutorial: The arrange verb
DataCamp
29 R Tutorial: The mutate verb
R Tutorial: The mutate verb
DataCamp
30 R Tutorial: What is cluster analysis?
R Tutorial: What is cluster analysis?
DataCamp
31 R Tutorial: Distance between two observations
R Tutorial: Distance between two observations
DataCamp
32 R Tutorial: The importance of scale
R Tutorial: The importance of scale
DataCamp
33 R Tutorial: Measuring distance for categorical data
R Tutorial: Measuring distance for categorical data
DataCamp
34 Python Tutorial: Plotting multiple graphs
Python Tutorial: Plotting multiple graphs
DataCamp
35 Python Tutorial: Customizing axes
Python Tutorial: Customizing axes
DataCamp
36 Python Tutorial: Legends, annotations, & styles
Python Tutorial: Legends, annotations, & styles
DataCamp
37 Python Tutorial: Introduction to iterators
Python Tutorial: Introduction to iterators
DataCamp
38 Python Tutorial: Playing with iterators
Python Tutorial: Playing with iterators
DataCamp
39 Python Tutorial: Using iterators to load large files into memory
Python Tutorial: Using iterators to load large files into memory
DataCamp
40 SQL Tutorial: Introduction to Relational Databases in SQL
SQL Tutorial: Introduction to Relational Databases in SQL
DataCamp
41 SQL Tutorial: Tables: At the core of every database
SQL Tutorial: Tables: At the core of every database
DataCamp
42 SQL Tutorial: Update your database as the structure changes
SQL Tutorial: Update your database as the structure changes
DataCamp
43 Python Tutorial: Classification-Tree Learning
Python Tutorial: Classification-Tree Learning
DataCamp
44 Python Tutorial: Decision-Tree for Classification
Python Tutorial: Decision-Tree for Classification
DataCamp
45 Python Tutorial: Decision-Tree for Regression
Python Tutorial: Decision-Tree for Regression
DataCamp
46 Python Tutorial: Census Subject Tables
Python Tutorial: Census Subject Tables
DataCamp
47 Python Tutorial: Census Geography
Python Tutorial: Census Geography
DataCamp
48 Python Tutorial: Using the Census API
Python Tutorial: Using the Census API
DataCamp
49 R Tutorial: A/B Testing in R
R Tutorial: A/B Testing in R
DataCamp
50 R Tutorial: Baseline Conversion Rates
R Tutorial: Baseline Conversion Rates
DataCamp
51 R Tutorial: Designing an Experiment - Power Analysis
R Tutorial: Designing an Experiment - Power Analysis
DataCamp
52 R Tutorial: Introduction to qualitative data
R Tutorial: Introduction to qualitative data
DataCamp
53 R Tutorial: Understanding your qualitative variables
R Tutorial: Understanding your qualitative variables
DataCamp
54 R Tutorial: Making Better Plots
R Tutorial: Making Better Plots
DataCamp
55 SQL Tutorial: OLTP and OLAP
SQL Tutorial: OLTP and OLAP
DataCamp
56 SQL Tutorial: Storing data
SQL Tutorial: Storing data
DataCamp
57 SQL Tutorial: Database design
SQL Tutorial: Database design
DataCamp
58 Python Tutorial: Introduction to spaCy
Python Tutorial: Introduction to spaCy
DataCamp
59 Python Tutorial: Statistical Models
Python Tutorial: Statistical Models
DataCamp
60 Python Tutorial: Rule-based Matching
Python Tutorial: Rule-based Matching
DataCamp

Related AI Lessons

Up next
Salesforce Flow New Features (Summer '26) | Open Record, URL & Show Toast Messages
AITECHONE
Watch →