Is Son one of the best finishers EVER? Let's look at some data. đ
We use actual goals minus expected goals (xG) as a proxy for finishing skill. Players who consistently score more than their xG means they are scoring goals other players would miss. Generally, only the most elite goalscorers *consistently* outperform their xG.
And I can find no player who consistently beats Son. It's astonishing.
Isn't a player's xG a product of team performance and individual performance?
Not saying this just for the memes, but surely spurs players take an xG hit for playing for Tottenham simply because the team itself has not looked particularly threatening for the past few seasons.
No, it takes into account the events and circumstances of the play, not the individual skill of the players involved. At least, that's how Opta's xG model works.
xG does not take into account the quality of player(s) involved in a particular play. It is an estimate of how the average player or team would perform in a similar situation.
Oh I think I see what you're saying: a poor team will create poorer chances in general, leading to lower xG shots. There's truth in that, but is it the case at Spurs? The club has had an average league position of 4.6 over the last 10 seasons, which suggests it has had above average players, regardless of (lack of) trophies, so you'd have thought, on balance, those players would in general be capable of "good play" resulting in high xG chances. All that is besides the point, though. This analysis is about how Son has an uncanny ability to score low xG chances.
Handy hint: you can eyeball low xG goals by looking at a player's Goal Log on FBref then sorting on the xG column, low to high. Always fun to check out the really low ones. The PSxG stat (called xGOT on Sofascore) gives us an indication of how savable the shot is - the closer to 1, the less likely to save. It's a useful indicator of the "quality" of the shot to go along with the "difficulty" represented by xG.
I'm afraid I don't think it works like that, although the specifics of xG algorithms that stats companies use are generally closely guarded secrets, they often talk about how it works in loose terms.
xG is usually produced by a huge predictive model which takes in a combo basically every possible data point you can imagine to do with a football match.
Opta talks about their model being fed by things like historic data for the ball position, limb positions, the quality of passing building up to a shot (some models talk about every pass from when the ball was out of play), the quality of the keeper in front and all sorts of other stuff they don't let on about.
Given all that I'm not sure it's possible to meaningfully normalise a player's xG because it's a product of other players on a pitch. So I think it's fair to conclude that a poorly performing team will very likely be negatively impacting an individual's xG.
The specifics of each company's algorithm is secret, but the premise of xG itself is well-understood and relatively straightforward: when taking a shot in a certain situation, what is the probability that an average player would score a goal?
The xG that a player racks up during a game is dependent on other players, but this analysis is about xG performance, i.e. how much better they are at scoring goals than that hypothetical average player. By comparing against a common statistical average player, the external factors about teammates are irrelevant.