pymc-bayesian-modeling

安装量: 164
排名: #5265

安装

npx skills add https://github.com/davila7/claude-code-templates --skill pymc-bayesian-modeling

PyMC Bayesian Modeling Overview

PyMC is a Python library for Bayesian modeling and probabilistic programming. Build, fit, validate, and compare Bayesian models using PyMC's modern API (version 5.x+), including hierarchical models, MCMC sampling (NUTS), variational inference, and model comparison (LOO, WAIC).

When to Use This Skill

This skill should be used when:

Building Bayesian models (linear/logistic regression, hierarchical models, time series, etc.) Performing MCMC sampling or variational inference Conducting prior/posterior predictive checks Diagnosing sampling issues (divergences, convergence, ESS) Comparing multiple models using information criteria (LOO, WAIC) Implementing uncertainty quantification through Bayesian methods Working with hierarchical/multilevel data structures Handling missing data or measurement error in a principled way Standard Bayesian Workflow

Follow this workflow for building and validating Bayesian models:

  1. Data Preparation import pymc as pm import arviz as az import numpy as np

Load and prepare data

X = ... # Predictors y = ... # Outcomes

Standardize predictors for better sampling

X_mean = X.mean(axis=0) X_std = X.std(axis=0) X_scaled = (X - X_mean) / X_std

Key practices:

Standardize continuous predictors (improves sampling efficiency) Center outcomes when possible Handle missing data explicitly (treat as parameters) Use named dimensions with coords for clarity 2. Model Building coords = { 'predictors': ['var1', 'var2', 'var3'], 'obs_id': np.arange(len(y)) }

with pm.Model(coords=coords) as model: # Priors alpha = pm.Normal('alpha', mu=0, sigma=1) beta = pm.Normal('beta', mu=0, sigma=1, dims='predictors') sigma = pm.HalfNormal('sigma', sigma=1)

# Linear predictor
mu = alpha + pm.math.dot(X_scaled, beta)

# Likelihood
y_obs = pm.Normal('y_obs', mu=mu, sigma=sigma, observed=y, dims='obs_id')

Key practices:

Use weakly informative priors (not flat priors) Use HalfNormal or Exponential for scale parameters Use named dimensions (dims) instead of shape when possible Use pm.Data() for values that will be updated for predictions 3. Prior Predictive Check

Always validate priors before fitting:

with model: prior_pred = pm.sample_prior_predictive(samples=1000, random_seed=42)

Visualize

az.plot_ppc(prior_pred, group='prior')

Check:

Do prior predictions span reasonable values? Are extreme values plausible given domain knowledge? If priors generate implausible data, adjust and re-check 4. Fit Model with model: # Optional: Quick exploration with ADVI # approx = pm.fit(n=20000)

# Full MCMC inference
idata = pm.sample(
    draws=2000,
    tune=1000,
    chains=4,
    target_accept=0.9,
    random_seed=42,
    idata_kwargs={'log_likelihood': True}  # For model comparison
)

Key parameters:

draws=2000: Number of samples per chain tune=1000: Warmup samples (discarded) chains=4: Run 4 chains for convergence checking target_accept=0.9: Higher for difficult posteriors (0.95-0.99) Include log_likelihood=True for model comparison 5. Check Diagnostics

Use the diagnostic script:

from scripts.model_diagnostics import check_diagnostics

results = check_diagnostics(idata, var_names=['alpha', 'beta', 'sigma'])

Check:

R-hat < 1.01: Chains have converged ESS > 400: Sufficient effective samples No divergences: NUTS sampled successfully Trace plots: Chains should mix well (fuzzy caterpillar)

If issues arise:

Divergences → Increase target_accept=0.95, use non-centered parameterization Low ESS → Sample more draws, reparameterize to reduce correlation High R-hat → Run longer, check for multimodality 6. Posterior Predictive Check

Validate model fit:

with model: pm.sample_posterior_predictive(idata, extend_inferencedata=True, random_seed=42)

Visualize

az.plot_ppc(idata)

Check:

Do posterior predictions capture observed data patterns? Are systematic deviations evident (model misspecification)? Consider alternative models if fit is poor 7. Analyze Results

Summary statistics

print(az.summary(idata, var_names=['alpha', 'beta', 'sigma']))

Posterior distributions

az.plot_posterior(idata, var_names=['alpha', 'beta', 'sigma'])

Coefficient estimates

az.plot_forest(idata, var_names=['beta'], combined=True)

  1. Make Predictions X_new = ... # New predictor values X_new_scaled = (X_new - X_mean) / X_std

with model: pm.set_data({'X_scaled': X_new_scaled}) post_pred = pm.sample_posterior_predictive( idata.posterior, var_names=['y_obs'], random_seed=42 )

Extract prediction intervals

y_pred_mean = post_pred.posterior_predictive['y_obs'].mean(dim=['chain', 'draw']) y_pred_hdi = az.hdi(post_pred.posterior_predictive, var_names=['y_obs'])

Common Model Patterns Linear Regression

For continuous outcomes with linear relationships:

with pm.Model() as linear_model: alpha = pm.Normal('alpha', mu=0, sigma=10) beta = pm.Normal('beta', mu=0, sigma=10, shape=n_predictors) sigma = pm.HalfNormal('sigma', sigma=1)

mu = alpha + pm.math.dot(X, beta)
y = pm.Normal('y', mu=mu, sigma=sigma, observed=y_obs)

Use template: assets/linear_regression_template.py

Logistic Regression

For binary outcomes:

with pm.Model() as logistic_model: alpha = pm.Normal('alpha', mu=0, sigma=10) beta = pm.Normal('beta', mu=0, sigma=10, shape=n_predictors)

logit_p = alpha + pm.math.dot(X, beta)
y = pm.Bernoulli('y', logit_p=logit_p, observed=y_obs)

Hierarchical Models

For grouped data (use non-centered parameterization):

with pm.Model(coords={'groups': group_names}) as hierarchical_model: # Hyperpriors mu_alpha = pm.Normal('mu_alpha', mu=0, sigma=10) sigma_alpha = pm.HalfNormal('sigma_alpha', sigma=1)

# Group-level (non-centered)
alpha_offset = pm.Normal('alpha_offset', mu=0, sigma=1, dims='groups')
alpha = pm.Deterministic('alpha', mu_alpha + sigma_alpha * alpha_offset, dims='groups')

# Observation-level
mu = alpha[group_idx]
sigma = pm.HalfNormal('sigma', sigma=1)
y = pm.Normal('y', mu=mu, sigma=sigma, observed=y_obs)

Use template: assets/hierarchical_model_template.py

Critical: Always use non-centered parameterization for hierarchical models to avoid divergences.

Poisson Regression

For count data:

with pm.Model() as poisson_model: alpha = pm.Normal('alpha', mu=0, sigma=10) beta = pm.Normal('beta', mu=0, sigma=10, shape=n_predictors)

log_lambda = alpha + pm.math.dot(X, beta)
y = pm.Poisson('y', mu=pm.math.exp(log_lambda), observed=y_obs)

For overdispersed counts, use NegativeBinomial instead.

Time Series

For autoregressive processes:

with pm.Model() as ar_model: sigma = pm.HalfNormal('sigma', sigma=1) rho = pm.Normal('rho', mu=0, sigma=0.5, shape=ar_order) init_dist = pm.Normal.dist(mu=0, sigma=sigma)

y = pm.AR('y', rho=rho, sigma=sigma, init_dist=init_dist, observed=y_obs)

Model Comparison Comparing Models

Use LOO or WAIC for model comparison:

from scripts.model_comparison import compare_models, check_loo_reliability

Fit models with log_likelihood

models = { 'Model1': idata1, 'Model2': idata2, 'Model3': idata3 }

Compare using LOO

comparison = compare_models(models, ic='loo')

Check reliability

check_loo_reliability(models)

Interpretation:

Δloo < 2: Models are similar, choose simpler model 2 < Δloo < 4: Weak evidence for better model 4 < Δloo < 10: Moderate evidence Δloo > 10: Strong evidence for better model

Check Pareto-k values:

k < 0.7: LOO reliable k > 0.7: Consider WAIC or k-fold CV Model Averaging

When models are similar, average predictions:

from scripts.model_comparison import model_averaging

averaged_pred, weights = model_averaging(models, var_name='y_obs')

Distribution Selection Guide For Priors

Scale parameters (σ, τ):

pm.HalfNormal('sigma', sigma=1) - Default choice pm.Exponential('sigma', lam=1) - Alternative pm.Gamma('sigma', alpha=2, beta=1) - More informative

Unbounded parameters:

pm.Normal('theta', mu=0, sigma=1) - For standardized data pm.StudentT('theta', nu=3, mu=0, sigma=1) - Robust to outliers

Positive parameters:

pm.LogNormal('theta', mu=0, sigma=1) pm.Gamma('theta', alpha=2, beta=1)

Probabilities:

pm.Beta('p', alpha=2, beta=2) - Weakly informative pm.Uniform('p', lower=0, upper=1) - Non-informative (use sparingly)

Correlation matrices:

pm.LKJCorr('corr', n=n_vars, eta=2) - eta=1 uniform, eta>1 prefers identity For Likelihoods

Continuous outcomes:

pm.Normal('y', mu=mu, sigma=sigma) - Default for continuous data pm.StudentT('y', nu=nu, mu=mu, sigma=sigma) - Robust to outliers

Count data:

pm.Poisson('y', mu=lambda) - Equidispersed counts pm.NegativeBinomial('y', mu=mu, alpha=alpha) - Overdispersed counts pm.ZeroInflatedPoisson('y', psi=psi, mu=mu) - Excess zeros

Binary outcomes:

pm.Bernoulli('y', p=p) or pm.Bernoulli('y', logit_p=logit_p)

Categorical outcomes:

pm.Categorical('y', p=probs)

See: references/distributions.md for comprehensive distribution reference

Sampling and Inference MCMC with NUTS

Default and recommended for most models:

idata = pm.sample( draws=2000, tune=1000, chains=4, target_accept=0.9, random_seed=42 )

Adjust when needed:

Divergences → target_accept=0.95 or higher Slow sampling → Use ADVI for initialization Discrete parameters → Use pm.Metropolis() for discrete vars Variational Inference

Fast approximation for exploration or initialization:

with model: approx = pm.fit(n=20000, method='advi')

# Use for initialization
start = approx.sample(return_inferencedata=False)[0]
idata = pm.sample(start=start)

Trade-offs:

Much faster than MCMC Approximate (may underestimate uncertainty) Good for large models or quick exploration

See: references/sampling_inference.md for detailed sampling guide

Diagnostic Scripts Comprehensive Diagnostics from scripts.model_diagnostics import create_diagnostic_report

create_diagnostic_report( idata, var_names=['alpha', 'beta', 'sigma'], output_dir='diagnostics/' )

Creates:

Trace plots Rank plots (mixing check) Autocorrelation plots Energy plots ESS evolution Summary statistics CSV Quick Diagnostic Check from scripts.model_diagnostics import check_diagnostics

results = check_diagnostics(idata)

Checks R-hat, ESS, divergences, and tree depth.

Common Issues and Solutions Divergences

Symptom: idata.sample_stats.diverging.sum() > 0

Solutions:

Increase target_accept=0.95 or 0.99 Use non-centered parameterization (hierarchical models) Add stronger priors to constrain parameters Check for model misspecification Low Effective Sample Size

Symptom: ESS < 400

Solutions:

Sample more draws: draws=5000 Reparameterize to reduce posterior correlation Use QR decomposition for regression with correlated predictors High R-hat

Symptom: R-hat > 1.01

Solutions:

Run longer chains: tune=2000, draws=5000 Check for multimodality Improve initialization with ADVI Slow Sampling

Solutions:

Use ADVI initialization Reduce model complexity Increase parallelization: cores=8, chains=8 Use variational inference if appropriate Best Practices Model Building Always standardize predictors for better sampling Use weakly informative priors (not flat) Use named dimensions (dims) for clarity Non-centered parameterization for hierarchical models Check prior predictive before fitting Sampling Run multiple chains (at least 4) for convergence Use target_accept=0.9 as baseline (higher if needed) Include log_likelihood=True for model comparison Set random seed for reproducibility Validation Check diagnostics before interpretation (R-hat, ESS, divergences) Posterior predictive check for model validation Compare multiple models when appropriate Report uncertainty (HDI intervals, not just point estimates) Workflow Start simple, add complexity gradually Prior predictive check → Fit → Diagnostics → Posterior predictive check Iterate on model specification based on checks Document assumptions and prior choices Resources

This skill includes:

References (references/)

distributions.md: Comprehensive catalog of PyMC distributions organized by category (continuous, discrete, multivariate, mixture, time series). Use when selecting priors or likelihoods.

sampling_inference.md: Detailed guide to sampling algorithms (NUTS, Metropolis, SMC), variational inference (ADVI, SVGD), and handling sampling issues. Use when encountering convergence problems or choosing inference methods.

workflows.md: Complete workflow examples and code patterns for common model types, data preparation, prior selection, and model validation. Use as a cookbook for standard Bayesian analyses.

Scripts (scripts/)

model_diagnostics.py: Automated diagnostic checking and report generation. Functions: check_diagnostics() for quick checks, create_diagnostic_report() for comprehensive analysis with plots.

model_comparison.py: Model comparison utilities using LOO/WAIC. Functions: compare_models(), check_loo_reliability(), model_averaging().

Templates (assets/)

linear_regression_template.py: Complete template for Bayesian linear regression with full workflow (data prep, prior checks, fitting, diagnostics, predictions).

hierarchical_model_template.py: Complete template for hierarchical/multilevel models with non-centered parameterization and group-level analysis.

Quick Reference Model Building with pm.Model(coords={'var': names}) as model: # Priors param = pm.Normal('param', mu=0, sigma=1, dims='var') # Likelihood y = pm.Normal('y', mu=..., sigma=..., observed=data)

Sampling idata = pm.sample(draws=2000, tune=1000, chains=4, target_accept=0.9)

Diagnostics from scripts.model_diagnostics import check_diagnostics check_diagnostics(idata)

Model Comparison from scripts.model_comparison import compare_models compare_models({'m1': idata1, 'm2': idata2}, ic='loo')

Predictions with model: pm.set_data({'X': X_new}) pred = pm.sample_posterior_predictive(idata.posterior)

Additional Notes PyMC integrates with ArviZ for visualization and diagnostics Use pm.model_to_graphviz(model) to visualize model structure Save results with idata.to_netcdf('results.nc') Load with az.from_netcdf('results.nc') For very large models, consider minibatch ADVI or data subsampling

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