arXiv Open Access 2026

Towards Intrinsically Calibrated Uncertainty Quantification in Industrial Data-Driven Models via Diffusion Sampler

Yiran Ma Jerome Le Ny Zhichao Chen Zhihuan Song
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Abstrak

In modern process industries, data-driven models are important tools for real-time monitoring when key performance indicators are difficult to measure directly. While accurate predictions are essential, reliable uncertainty quantification (UQ) is equally critical for safety, reliability, and decision-making, but remains a major challenge in current data-driven approaches. In this work, we introduce a diffusion-based posterior sampling framework that inherently produces well-calibrated predictive uncertainty via faithful posterior sampling, eliminating the need for post-hoc calibration. In extensive evaluations on synthetic distributions, the Raman-based phenylacetic acid soft sensor benchmark, and a real ammonia synthesis case study, our method achieves practical improvements over existing UQ techniques in both uncertainty calibration and predictive accuracy. These results highlight diffusion samplers as a principled and scalable paradigm for advancing uncertainty-aware modeling in industrial applications.

Topik & Kata Kunci

Penulis (4)

Y

Yiran Ma

J

Jerome Le Ny

Z

Zhichao Chen

Z

Zhihuan Song

Format Sitasi

Ma, Y., Ny, J.L., Chen, Z., Song, Z. (2026). Towards Intrinsically Calibrated Uncertainty Quantification in Industrial Data-Driven Models via Diffusion Sampler. https://arxiv.org/abs/2604.01870

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Tahun Terbit
2026
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en
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arXiv
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Open Access ✓