I've seen examples of age-adjusted RAPM such as this 14 year RAPM dataset but I don't understand how it's calculated.
I understand how to calculate vanilla RAPM, but how do you factor in age adjustments if it's a multi-year regression? I just don't get it at all tbh
How do you adjust multi-year RAPM for age?
Re: How do you adjust multi-year RAPM for age?
It's all in the pre-processing and post-processing. Essentially, the observation is adjusted from the player's actual age to their age 27 (prime) age. So if the player is 20, then several points/100 possessions would be added to the observation to shift that player to age 27. This is done for all 10 players on the court.azuko wrote: ↑Mon Aug 02, 2021 1:07 am I've seen examples of age-adjusted RAPM such as this 14 year RAPM dataset but I don't understand how it's calculated.
I understand how to calculate vanilla RAPM, but how do you factor in age adjustments if it's a multi-year regression? I just don't get it at all tbh
That would yield "Age 27" ratings for all players from the RAPM.
Then, in post-processing, the age adjustment is subtracted back out, to yield the RAPM's best estimate of what that player actually did, averaged over the entire RAPM period.
Re: How do you adjust multi-year RAPM for age?
Sorry I’m still a bit confused. What do you mean by observation? Like a stint? If for one stint you have the 10 players with a +/- of +5, for example, you’re changing that +/- based on the age of each player on the court?DSMok1 wrote: ↑Mon Aug 02, 2021 11:48 amIt's all in the pre-processing and post-processing. Essentially, the observation is adjusted from the player's actual age to their age 27 (prime) age. So if the player is 20, then several points/100 possessions would be added to the observation to shift that player to age 27. This is done for all 10 players on the court.azuko wrote: ↑Mon Aug 02, 2021 1:07 am I've seen examples of age-adjusted RAPM such as this 14 year RAPM dataset but I don't understand how it's calculated.
I understand how to calculate vanilla RAPM, but how do you factor in age adjustments if it's a multi-year regression? I just don't get it at all tbh
That would yield "Age 27" ratings for all players from the RAPM.
Then, in post-processing, the age adjustment is subtracted back out, to yield the RAPM's best estimate of what that player actually did, averaged over the entire RAPM period.
And how exactly would you subtract it out? Because it would include a variety of different ages so how would that calculation work?
Sorry for all the questions, thanks for the help!
Re: How do you adjust multi-year RAPM for age?
viewtopic.php?p=33133&sid=53d4e7c394d1f ... 666#p33133
I just found this old explanation- is this the same process? Except where the prior = Age 27 - Age X value.
I just found this old explanation- is this the same process? Except where the prior = Age 27 - Age X value.
Re: How do you adjust multi-year RAPM for age?
Yes, that is the same process.azuko wrote: ↑Mon Aug 02, 2021 5:16 pm viewtopic.php?p=33133&sid=53d4e7c394d1f ... 666#p33133
I just found this old explanation- is this the same process? Except where the prior = Age 27 - Age X value.
Now, since players age differently (and may have injuries, etc), I prefer a Bayesian RAPM approach. I like to use something like playing time (and quality of team) as a prior, rather than assuming the same aging curve for everyone.
And there are more sophisticated approaches than that.
To be clear--the RAPM generates exactly one value for the player for the whole period... to assign this to individual years within the stint is highly inaccurate, even if you use the aging curve or Bayesian prior to try to split it up.
Re: How do you adjust multi-year RAPM for age?
Thanks!DSMok1 wrote: ↑Mon Aug 02, 2021 5:54 pmYes, that is the same process.azuko wrote: ↑Mon Aug 02, 2021 5:16 pm viewtopic.php?p=33133&sid=53d4e7c394d1f ... 666#p33133
I just found this old explanation- is this the same process? Except where the prior = Age 27 - Age X value.
Now, since players age differently (and may have injuries, etc), I prefer a Bayesian RAPM approach. I like to use something like playing time (and quality of team) as a prior, rather than assuming the same aging curve for everyone.
And there are more sophisticated approaches than that.
To be clear--the RAPM generates exactly one value for the player for the whole period... to assign this to individual years within the stint is highly inaccurate, even if you use the aging curve or Bayesian prior to try to split it up.
Just to be clear, when you say playing time and quality of team, are those two separate priors or one that is a function of both variables?
And I don't really understand your last sentence. Are you saying that using the aging curve or Bayesian prior is ineffective for single seasons and best fit for a multi-year sample? I tried calculating something like ~20 yr NPI RAPM but some of the results seemed off (even relative to RAPM results I found online, like the one I originally linked) which is why I thought I should incorporate some type of adjustment.
Re: How do you adjust multi-year RAPM for age?
When I did the prior using playing time and quality of team, it was one function of both variables. The slope is different--low minutes players are similar on bad and good teams, but the slope of the line for quality vs. playing time is steeper on good teams than bad teams. I.E. a 0 MPG player is the same on bad and good teams, but a 36mpg player is much better on good teams than bad teams.azuko wrote: ↑Mon Aug 02, 2021 6:16 pmThanks!
Just to be clear, when you say playing time and quality of team, are those two separate priors or one that is a function of both variables?
And I don't really understand your last sentence. Are you saying that using the aging curve or Bayesian prior is ineffective for single seasons and best fit for a multi-year sample? I tried calculating something like ~20 yr NPI RAPM but some of the results seemed off (even relative to RAPM results I found online, like the one I originally linked) which is why I thought I should incorporate some type of adjustment.
My last sentence: with a very long-term RAPM, your output is still just one single value for the player. I.E. Kobe = +3.0. That has very little value for individual seasons within the long term RAPM. He wasn't +3.0 for the whole term. He averaged +3.0 (in the eyes of the RAPM) over that term.
The reason using a prior or an age adjustment is so important in long term RAPM: If the RAPM has a lot of evidence that LeBron is a +7.0 player, that will really skew the RAPM's perception of his teammates in his rookie season, when he was not actually +7.0. It will think they were really, really terrible in order for them to have the results they did.
A final reason for using the prior: low minutes players are pulled toward 0 by vanilla RAPM. That makes no sense, and it ends up skewing the entire results. The low minute cadre's overrating biases all of the other results downwards, especially the moderate-minute players.
Re: How do you adjust multi-year RAPM for age?
Awesome, I understand now. Thank you for your help!DSMok1 wrote: ↑Tue Aug 03, 2021 12:46 pmWhen I did the prior using playing time and quality of team, it was one function of both variables. The slope is different--low minutes players are similar on bad and good teams, but the slope of the line for quality vs. playing time is steeper on good teams than bad teams. I.E. a 0 MPG player is the same on bad and good teams, but a 36mpg player is much better on good teams than bad teams.azuko wrote: ↑Mon Aug 02, 2021 6:16 pmThanks!
Just to be clear, when you say playing time and quality of team, are those two separate priors or one that is a function of both variables?
And I don't really understand your last sentence. Are you saying that using the aging curve or Bayesian prior is ineffective for single seasons and best fit for a multi-year sample? I tried calculating something like ~20 yr NPI RAPM but some of the results seemed off (even relative to RAPM results I found online, like the one I originally linked) which is why I thought I should incorporate some type of adjustment.
My last sentence: with a very long-term RAPM, your output is still just one single value for the player. I.E. Kobe = +3.0. That has very little value for individual seasons within the long term RAPM. He wasn't +3.0 for the whole term. He averaged +3.0 (in the eyes of the RAPM) over that term.
The reason using a prior or an age adjustment is so important in long term RAPM: If the RAPM has a lot of evidence that LeBron is a +7.0 player, that will really skew the RAPM's perception of his teammates in his rookie season, when he was not actually +7.0. It will think they were really, really terrible in order for them to have the results they did.
A final reason for using the prior: low minutes players are pulled toward 0 by vanilla RAPM. That makes no sense, and it ends up skewing the entire results. The low minute cadre's overrating biases all of the other results downwards, especially the moderate-minute players.