Validates and diagnostics neural posterior estimators using simulation-based calibration and coverage analysis.
This skill provides comprehensive tools for verifying the reliability of BayesFlow models through Simulation-Based Calibration (SBC). It enables developers to implement condition grid validation across full design spaces, generate and cache validation datasets for efficient hyperparameter optimization, and monitor key metrics like C2ST and calibration error. By providing automated quality gates and diagnostic plotting, it ensures that neural simulators maintain nominal coverage and statistical consistency, preventing common pitfalls like validating only at training conditions or ignoring the finite-sample calibration floor.
主な機能
010 GitHub stars
02Automated condition grid generation for thorough parametric testing
03Efficient validation data caching for HPO trial reuse