Trying to add a few more data points to the discussion:
I used the Windows game to perform simulations of many seasons under specific circumstances. The players were from the 2021 set. Teams were based on a specific 365 league that I was in last year. In Windows, you can edit a player’s ratings, as well as set an entire league’s manager strategy. I used J.T. Realmuto to test the impact of arm strength and used manager strategy to test SB strategy. All other variables (teams, players, strategies, etc.) were held constant. I tested a +5 arm and -5 arm as well as SB strategy of normal and SB strategy of Extra Conservative. Statistics recorded for each season were Realmuto’s SB allowed, CS, and the team’s runs allowed. 20 seasons were simulated for each combination of arm/strategy. The following summarizes my results:
Arm | SB Strategy | Avg. SB | Avg. CS | Avg. SB% | Avg. Runs Allow. |
|
-5 | Normal | 33.4 | 14.1 | 70.4% | 885 |
|
+5 | Normal | 120.5 | 33.8 | 78.1% | 878 |
|
-5 | Ex. Conserv. | 22.0 | 7.3 | 75.0% | 876 |
|
+5 | Ex. Conserv. | 84.9 | 17.9 | 82.6% | 854 |
|
Differences between SB% by Arm and by strategy are statistically significant
Most run differences are not statistically significant, however the difference between normal sb strategy and Ex. Cons. Sb strategy at a +5 arm is statistically significant
Significance measured at p=5%
Please note that saying a difference is statistically significant just means that it is likely that the means of those distributions are different. It does not mean that the difference is exactly as measured in these simulations.