We have
TODO:
- Extract data using datasources
- Identify appropriate stats to include
- Characterize variance of the observations (
$$\mathbf{\sigma_{it}^2}$$ in below models)
In this variation, each player possesses a set of latent curves. Let
The choice of
Notes:
- Shared loading matrix (How observed stats depend on the underlying latent stats is the same for each player)
- Player level basis functions (Could implement multiple hierarchical levels)
TODO:
- Fix identifiability issues (Stiefel parameterizations/priors)
- Reasonable priors
- Explore parameterizations of the different curves
- Fit to actual data (Account for copula component - link functions depends on the type of the observed stat)
- Work on interpretation
This version gives a fixed pool of basis functions to represent the latent curves. Variation in each player is captured by letting the loading weights differ between each player.
The choice of
TODO:
- Look at identifiability (PPC checks out but doubts about actual identifiability)
- Reasonable priors
- Fit to actual data (Account for copula component - link functions depends on the type of the observed stat)
- Work on interpretation