E-QRGMM: Efficient Generative Metamodeling for Covariate-Dependent Uncertainty Quantification
About
Covariate-dependent uncertainty quantification in simulation-based inference is crucial for high-stakes decision-making but remains challenging due to the limitations of existing methods such as conformal prediction and classical bootstrap, which struggle with covariate-specific conditioning. We propose Efficient Quantile-Regression-Based Generative Metamodeling (E-QRGMM), a novel framework that accelerates the quantile-regression-based generative metamodeling (QRGMM) approach by integrating cubic Hermite interpolation with gradient estimation. Theoretically, we show that E-QRGMM preserves the convergence rate of the original QRGMM while reducing grid complexity from $O(n^{1/2})$ to $O(n^{1/5})$ for the majority of quantile levels, thereby substantially improving computational efficiency. Empirically, E-QRGMM achieves a superior trade-off between distributional accuracy and training speed compared to both QRGMM and other advanced deep generative models on synthetic and practical datasets. Moreover, by enabling bootstrap-based construction of confidence intervals for arbitrary estimands of interest, E-QRGMM provides a practical solution for covariate-dependent uncertainty quantification.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Confidence interval construction | Normal distribution | Coverage Rate90 | 6 | |
| Confidence interval construction | Halfnormal distribution | Coverage Rate90 | 6 | |
| Confidence interval construction | Student's t distribution | Coverage91 | 6 | |
| Distributional Approximation | Normal distribution | KS Statistic0.011 | 4 | |
| Distributional Approximation | Halfnormal distribution | KS Statistic0.0113 | 4 | |
| Distributional Approximation | Student's t distribution | KS Statistic0.011 | 4 | |
| Generative Modeling | inventory management dataset | KS0.0132 | 4 | |
| Mean Estimation | inventory management dataset | Coverage90 | 2 | |
| Quantile Estimation | inventory management dataset | Coverage89 | 2 | |
| Survival Function Estimation | inventory management dataset | Coverage90 | 2 |