Basketball

Remembering Kobe Through Data

It is almost too easy to remember Kobe’s feats on the basketball court. He possessed unbelievable dedication to the game and wanted to master his craft. I would argue that it is just as important important remember him as a father, an entrepreneur, and a creator.

An article about Kobe in Grantland actually got me initially interested in basketball analytics. The piece talked about how Kobe’s missed shots lead to more offensive rebounds and scores than anyone else. This was the result of something that was not quantifiable at the time.

It seems like many of Kobe’s off the court impacts are similarly difficult to quantify. He has touched lives, not just through basketball, but through mentorship, film, and countless other outlets.

With Kobe’s passing, I wanted to show how other people remembered him, not just as a basketball player, but also as a man. I took all of the tweets after his death and visualized them. I took the most commonly used words associated with him and made a word cloud. (Code and image located here: https://github.com/PlayingNumbers/Remembering_Kobe )

How Twitter Remembers Kobe
Original Image

Although word clouds are an imperfect science, many things pop out at me. First is the outpouring of love for him and for his family. Second is impact that he had on basketball. Finally, there are words and phrases in multiple different languages; these show how much of an impact on the globe he had.

I, along with many others, will mourn the loss of Kobe and his daughter Gianna. I hope that this visual will help to remind us of the tremendous impact that he had on us in life and in passing.

Ken Jee

Ken is one of the founders of Playing Numbers. He has worked in sports analytics for the last 5 years focusing primarily on golf and basketball. He founded playing numbers to help others learn about the field he loves.

Recent Posts

Sports Analytics & Streaming Data Science on Twitch

In this video, I had the pleasure of speaking with Nick Wan. Nick streams data…

4 years ago

Classifying MLB Hit Outcomes

In 2015, MLB introduced Statcast to all 30 stadiums. This system monitors player and ball movement and…

4 years ago

Data Science in Sports (Talk at Northwestern University)

This past weekend, I was honored to speak to almost 100 Kellogg MBA students about…

5 years ago

Jimmy Graham: A risk worth taking for the Chicago Bears?

Bears fans got a lesson in regression to the mean last season. It may have…

5 years ago

Using ML to Understand Real Madrid’s Poor Last decade in La Liga

Using K-Means Clustering to analyze the types of teams Real Madrid and Barcelona drop points…

5 years ago

Using NCAA Stats to Predict NBA Draft Order

Intro & Lit Review Predicting the NBA draft is always difficult. Should you draft a…

5 years ago

This website uses cookies.