Once again Mr. Shaw has found a simple yet useful program on
the internet. OpenHeatMap is free software that can be used to express your
data in a visually striking way. If you have data that is geographically
dependent, such as unemployment or election results, this is a great program. It
will display your data on an extremely detailed world map that is capable of
being zoomed. This program may even be used on data that is not necessarily
geographically dependent, but may show interesting patterns in the data, such
as where it comes from.
I decided to gather
the top 100 football recruits based on Rivals.com rankings for the past three
years. I wanted to create a map that would show where these recruits came from.
While creating this visualization I discovered a few helpful tricks and tools. First
I discovered that besides location, this program can use size and color of the
markers to display secondary information. I was able to display the players
overall rank as dot size in the visualization. The default set the higher
ranked players (ie 95th or 99th) as the largest dots. In
reality, the lower ranked players (ie 3rd or 5th) are the
best players in the country. I wanted to map to express this idea. I found that
you can reverse the ordering in the chart editing section so that the rank goes
from 100 to 1 instead of 1 to 100. This fixed the problem. Another great
feature is the ability of the program to show changes over time. I have
included a map of each year below.
There were a few key insights that I found from my
visualization. Most of the recruits are found in the southeast, west coast, and
mid-Atlantic regions of the United States. The best recruits were spread out
pretty evenly throughout these three main regions. The year did not have a
significant impact on the geographical distribution of the recruits.
There are a couple more useful features in this program that
I have not mentioned. One nice addition is that you can mouse over each of the
points in the map and all the information on that data point will be displayed.
Another is that clicking the play button on the lower left corner of the
display will run your data chronologically. At first the data was displayed too
quickly, but I was able to adjust the speed and slow it down. After this, the
visualization ran perfectly.
With more time, more years of data can be gathered and a
better understanding of the data can be had. If there was a dynamic shift in
location of recruits, this could mean a shift in the general population. Being
able to see this shift in a visualization created with a program such as this
would be very powerful.
No comments:
Post a Comment