#37 Lake Erie Walleye (9-2)

avg: 987.51  •  sd: 134.82  •  top 16/20: 0%

Click on a column to sort  • 
# Opponent Result Game Rating Status Date Event
61 Incline Win 9-5 882.51 Jun 21st SCINNY 2025
- St. Louis Storm** Win 13-1 353.45 Ignored Jun 21st SCINNY 2025
67 Solstice** Win 13-3 608.03 Ignored Jun 21st SCINNY 2025
41 Indy Rogue Win 13-6 1380.17 Jun 22nd SCINNY 2025
53 Sureshot Win 10-6 1091.74 Jun 22nd SCINNY 2025
52 Dish Win 12-8 1072.84 Jul 12th Heavyweights 2025
64 Medusa** Win 15-5 735.77 Ignored Jul 12th Heavyweights 2025
35 River Monsters Win 11-9 1270.15 Jul 12th Heavyweights 2025
73 Lakeshore Drive** Win 15-0 35.22 Ignored Jul 12th Heavyweights 2025
28 Stellar Loss 10-14 775.15 Jul 13th Heavyweights 2025
35 River Monsters Loss 3-10 420.94 Jul 13th Heavyweights 2025
**Blowout Eligible

FAQ

The uncertainty of the mean is equal to the standard deviation of the set of game ratings, divided by the square root of the number of games. We treated a team’s ranking as a normally distributed random variable, with the USAU ranking as the mean and the uncertainty of the ranking as the standard deviation
  1. Calculate uncertainy for USAU ranking averge
  2. Model ranking as a normal distribution around USAU averge with standard deviation equal to uncertainty
  3. Simulate seasons by drawing a rank for each team from their distribution. Note the teams in the top 16 (club) or top 20 (college)
  4. Sum the fractions for each region for how often each of it's teams appeared in the top 16 (club) or top 20 (college)
  5. Subtract one from each fraction for "autobids"
  6. Award remainings bids to the regions with the highest remaining fraction, subtracting one from the fraction each time a bid is awarded
There is an article on Ulitworld written by Scott Dunham and I that gives a little more context (though it probably was the thing that linked you here)