SFM Tracker

Weekly Top 20 Predictions by League

Overall Performance: Premier League (Completed Games Only)
SFM Top 20 Predictions
520
Predictions
104
Scored
20.0%
Hit Rate
Naive Top 20 Predictions
520
Predictions
99
Scored
19.0%
Hit Rate
SFM outperforms Naive:
20.0% vs 19.0% (+1.0 pp)
Brier Score: Premier League
0.1574
SFM
0.1564
Naive
Naive 0.1564 < SFM 0.1574
Calibration: Premier League
Hit Rate Over Time: Premier League (SFM vs Naive)
Premier League 2025/26 GD16 Completed
This GD: 15.0% (3/20) Overall: 20.0% (104/520) 26 gamedays completed
Rank Player Team vs SFM Naive Result
1 Erling Haaland Manchester City Crystal Palace 46.0% 60.9% 2 goals
2 Mohamed Salah FC Liverpool Brighton & Hove Albion 37.5% 42.6% No goal
3 Ollie Watkins Aston Villa West Ham United 32.3% 34.8% No goal
4 Alexander Isak FC Liverpool Brighton & Hove Albion 32.0% 33.1% No goal
5 Benjamin Sesko Manchester United AFC Bournemouth 31.5% 33.9% No goal
6 Gabriel Jesus FC Arsenal Wolverhampton Wanderers 29.3% 28.7% No goal
7 Bukayo Saka FC Arsenal Wolverhampton Wanderers 29.2% 23.6% No goal
8 Eberechi Eze FC Arsenal Wolverhampton Wanderers 28.4% 23.3% No goal
9 Cole Palmer FC Chelsea FC Everton 28.2% 33.8% 1 goal
10 Callum Wilson West Ham United Aston Villa 26.2% 31.5% No goal
11 Gabriel Martinelli FC Arsenal Wolverhampton Wanderers 25.8% 20.5% No goal
12 Leandro Trossard FC Arsenal Wolverhampton Wanderers 25.6% 20.3% No goal
13 Donyell Malen Aston Villa West Ham United 25.1% 29.7% No goal
14 Randal Kolo Muani Tottenham Hotspur Nottingham Forest 24.7% 28.0% No goal
15 Hugo Ekitike FC Liverpool Brighton & Hove Albion 24.2% 24.7% 2 goals
16 Jean Philippe Mateta Crystal Palace Manchester City 23.3% 26.4% No goal
17 Joshua Zirkzee Manchester United AFC Bournemouth 23.1% 22.4% No goal
18 Martin Oedegaard FC Arsenal Wolverhampton Wanderers 22.6% 18.9% No goal
19 Martin Zubimendi FC Arsenal Wolverhampton Wanderers 22.2% -- No goal
20 Declan Rice FC Arsenal Wolverhampton Wanderers 22.1% -- No goal
Understanding Hit Rate vs Brier Score

You might notice that hit rate and Brier Score can tell different stories.

Hit Rate

Simply counts: "How many of my top 20 picks scored?"

A naive model that always picks proven strikers (Haaland, Kane) will have a high hit rate because these players score often, regardless of the match context.

Brier Score

Asks: "How accurate were the probability estimates?"

If SFM says "32% chance" and Naive says "38% chance" for the same player who doesn't score, SFM gets a better Brier Score because its estimate was closer to reality.

Bottom line: Hit rate measures selection quality (who you pick), while Brier Score measures probability quality (how well-calibrated your predictions are). A model can pick slightly fewer scorers but still be more valuable if its probabilities are more trustworthy for betting or decision-making.
SFM Tracker
Top 20 Selection

For each league and gameday, we select the 20 players with the highest median probability of scoring at least one goal as predicted by the SFM.

Frozen Predictions

Predictions are locked before matches are played. This ensures transparent, verifiable performance tracking.

Fair Comparison

We compare SFM's top 20 picks against Naive's own top 20 picks (ranked by historical average). This is apples-to-apples.

Brier Score

Evaluation metric for probabilistic predictions. Measures both calibration and discrimination. Lower is better.