Submitted by ssharpe42 t3_ytf0pl in MachineLearning
https://sharpestats.com/mlb-injury-point-process/
I've wanted my hand at modeling injury risk for a while, I finally got around to compiling a large dataset of injuries in the MLB. I wrote an overview of point processes and applied them to injuries in the 2012-2022 seasons to illustrate and quantify how injury history influences future injury risk. Let me know what you think!
hypothesis_tooStrong t1_iw5ylu8 wrote
Great post! I've only recently been getting into point processes and it's nice to see it applied on a real world application that is also easily understandable.
I think that non-baseball related injuries can also be incorporated as external events that have their own additive influence term in the intensity equation that decays with time, if there are enough such data points to justify it. I've seen this done in some (finance related) paper, but not sure how it affects the likelihood calculation.
Also, I'm not familiar with this field. Is your accuracy typically what can be expected from other ML models too?