💾 Archived View for isoraqathedh.pollux.casa › twitch-stats.gmi captured on 2021-12-06 at 14:29:53. Gemini links have been rewritten to link to archived content
⬅️ Previous capture (2021-12-03)
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Recently there was the Twitch leaks that someone packaged the earnings subset of into a neat space-separated file. Since it’s so easily read by machine I decided to do some simple graphs with it.
Twitch streamers earnings against rank, with Zipf and ordinary exponential fits.
One of the things I noticed is that it’s not really Zipfian. It is exponential but the tail is very much flatter than what a Zipfian distribution would expect. However, even the exponential fit isn’t perfect. There’s that characteristic bulge where the exponent turns over significantly at about the 400th rank. I saw it happen with some other distributions too, like the word frequency chart in Wikipedia, so I am thinking if I can make a new empirical distribution out of it.
I also only have the top 10 000 accounts, so I don’t know what would happen if I include all of it. If someone has a more complete list, here’s the source code that I used to generate the chart above, assuming that you have it in a directory where it is called earnings.csv.
#!/usr/bin/gnuplot set terminal pngcairo font ",10" size 1024, 768 set output "twitch-earnings-gen.png" set title "Twitch streamers earnings against rank" set logscale xy set grid set key autotitle columnhead set ylabel "Earnings/USD" set xlabel "Rank" expfit(x) = a * x ** b a = 3000000 b = -1 fit expfit(x) 'earnings.csv' using 1:4 via a, b zipf(x) = zipf_a * x ** -1 zipf_a = 3000000 fit zipf(x) 'earnings.csv' using 1:4 via zipf_a set label sprintf("Fit type: exponential (ax^b) \na = %8.2f; b = %1.9f", a, b) \ at graph 0.2, graph 0.2 set label sprintf("Fit type: Zipf (a/x) \na = %8.2f", zipf_a) \ at graph 0.2, graph 0.1 plot 'earnings.csv' using 1:4, \ expfit(x) title "Fit of GrossEarning", \ zipf(x) title "Zipf fit of GrossEarning"
Disclaimer – I will not publish any raw data that I have.