| Bumbis vs Reina | 6–37 | 13.95% |
| Bumbis vs Steve | 3–32 | 8.57% |
| Bumbis vs King | 2–28 | 6.67% |
| Bumbis vs Jin | 1–22 | 4.35% |
| Bumbis vs Clive | 3–18 | 14.29% |
| Bumbis vs Yoshimitsu | 1–17 | 5.56% |
| Bumbis vs Hwoarang | 2–16 | 11.11% |
| Bumbis vs Xiaoyu | 3–15 | 16.67% |
| Bumbis vs Bryan | 1–17 | 5.56% |
| Bumbis vs Lidia | 2–16 | 11.11% |
| Bumbis vs Lars | 2–13 | 13.33% |
| Bumbis vs Kazuya | 3–11 | 21.43% |
| Bumbis vs Victor | 2–12 | 14.29% |
| Bumbis vs Jun | 0–12 | 0.00% |
| Bumbis vs Leo | 1–10 | 9.09% |
| Bumbis vs Law | 1–9 | 10.00% |
| Bumbis vs Dragunov | 0–10 | 0.00% |
| Bumbis vs Nina | 3–7 | 30.00% |
| Bumbis vs Alisa | 1–8 | 11.11% |
| Bumbis vs Kuma | 0–9 | 0.00% |
| Bumbis vs Azucena | 1–7 | 12.50% |
| Bumbis vs Eddy | 0–8 | 0.00% |
| Bumbis vs Claudio | 3–3 | 50.00% |
| Bumbis vs Asuka | 0–5 | 0.00% |
| Bumbis vs Devil Jin | 1–3 | 25.00% |
| Bumbis vs Lili | 0–4 | 0.00% |
| Bumbis vs Shaheen | 1–3 | 25.00% |
| Bumbis vs Feng | 0–3 | 0.00% |
| Bumbis vs Zafina | 0–3 | 0.00% |
| Bumbis vs Heihachi | 1–2 | 33.33% |
| Bumbis vs Paul | 0–2 | 0.00% |
| Bumbis vs Lee | 0–2 | 0.00% |
| Bumbis vs Leroy | 0–2 | 0.00% |
| Bumbis vs Raven | 0–2 | 0.00% |
| Bumbis vs Anna | 0–2 | 0.00% |
| Bumbis vs Jack-8 | 0–1 | 0.00% |
| Bumbis vs Panda | 0–1 | 0.00% |
Limitations
This data is often requested to give insight into which characters you have more trouble with than others, but it is not particularly helpful for that. The main issue is that it is heavily skewed by how strong the opponents you play are.
For example, this data suggests my worst matchup is clearly vs Reina, but that's just because most of those games are vs Yagami.
There is a way to account for this being worked on. The central idea is to assign each matchup a rating vs you which adjusts based on the result, much like the regular rating but also based on the rating of each player. With this, it would give a better summary of how well you perform vs each character.
In the meantime, this page is here to present the data as requested.