Agent skill
visual-predictive-checks
Guidelines for visual predictive checks following Säilynoja et al. recommendations using ArviZ
Install this agent skill to your Project
npx add-skill https://github.com/sunxd3/bayesian-statistician-plugin/tree/main/skills/visual-predictive-checks
SKILL.md
Visual Predictive Checks
Use this skill when running prior or posterior predictive checks to validate Bayesian models. These checks compare simulated data from the model to observed data (or plausible ranges for prior predictive checks).
ArviZ Workflow
- Fit model with CmdStanPy, generating predictive quantities in
generated quantitiesblock (e.g.,y_repfor posterior predictive,y_prior_predfor prior predictive) - Convert to ArviZ DataTree using
arviz_base.from_cmdstanpy, specifying predictive groups - Create visual checks using
arviz_plotsfunctions
Visual Checks by Data Type
Continuous Data
- Distribution:
plot_ppc_distwithkind="ecdf"andkind="kde" - PIT ECDF:
plot_ppc_pit- shows calibration with simultaneous bands - Coverage:
plot_ppc_pit(coverage=True)- equal-tailed interval coverage - Summary statistics:
plot_ppc_tstatfor median, MAD, IQR combined withcombine_plots - LOO-PIT:
plot_loo_pit- avoids double-dipping by using leave-one-out
Count Data
- Rootogram:
plot_ppc_rootogram- emphasizes discreteness and dispersion - Histogram:
plot_ppc_dist(kind="hist") - PIT ECDF and coverage: Same as continuous
Binary/Categorical/Ordinal Data
- Calibration:
plot_ppc_pava- PAV-adjusted calibration curves - Intervals:
plot_ppc_interval- posterior predictive intervals with observed overlay - PIT ECDF and coverage: Same as continuous
Censored/Survival Data
- Survival curves:
plot_ppc_censored- Kaplan-Meier style PPC - PIT ECDF and coverage: Same as continuous
Key Principles
Use multiple complementary views rather than relying on a single plot. For example, for continuous outcomes, combine ECDF (shows full distribution) with PIT ECDF (shows calibration) and t-stat PPCs (shows specific features like central tendency and spread).
LOO-PIT is preferred over regular PIT for posterior checks as it approximates leave-one-out predictive distribution and avoids overfitting concerns.
Name plots descriptively: prior_predictive_ecdf.png, loo_pit_calibration.png, posterior_rootogram.png.
Recommended Agent Skills
Expand your agent's capabilities with these related and highly-rated skills.
artifact-guidelines
Guidelines for writing reports, organizing files, and generating code artifacts
stan-coding
Best practices for writing efficient, clean Stan programs
bayesian-workflow
Use when performing Bayesian statistical analysis, building probabilistic models, or when the task involves prior specification, posterior inference, or predictive checks.
convergence-diagnostics
MCMC convergence diagnostics using CmdStanPy and ArviZ
python-environment
Python environment setup with uv, shared utilities, and script structure guidelines.
stan-ode-modeler
Guidelines for Stan models with ODE-based dynamics using modern interfaces
Didn't find tool you were looking for?