Learning Context-conditioned Gaussian Overbounds for Convolution-Based Uncertainty Propagation
Ruirui Liu, Xuejie Hou, Yiping Jiang, Hui Ren

TL;DR
This paper introduces a neural network-based framework for producing context-aware Gaussian overbounds that provide conservative uncertainty estimates, improving over traditional global bounds in safety-critical applications.
Contribution
It develops a unified learning approach to generate feature-conditioned Gaussian overbounds with provable conservatism and tighter bounds than classical methods.
Findings
Tighter bounds achieved on synthetic and real-world datasets.
Supports conservative linear and convolutional analysis within certified intervals.
Maintains conservatism while reducing redundancy compared to traditional overbounding methods.
Abstract
Uncertainty quantification is essential in safety-critical settings--from autonomous driving to aviation, finance, and health--where decisions must rely on conservative bounds rather than point estimates. Predictor-level intervals (e.g., from quantile regression, conformal prediction, variance networks, or Bayesian models) generally do not compose: adding two per-variable intervals need not yield a valid interval for their sum or preserve coverage. In aviation, Gaussian overbounding replaces complex error distributions with a conservative Gaussian whose tails dominate the truth, so conservatism propagates through linear operations. Yet classical overbounds are global, often overly conservative, and hard to adapt to feature-conditioned errors. We propose a unified learning framework that trains neural networks to produce context-aware Gaussian overbounds--mean and scale--with provable…
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