UQ-SHRED: uncertainty quantification of shallow recurrent decoder networks for sparse sensing via engression

arXiv cs.LG / 4/3/2026

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Key Points

  • 提案されたUQ-SHREDは、超疎なセンサ計測から高次元の時空間場を復元するSHREDの限界(データ不足・高頻度・確率的系での不確実性推定の欠如)を、分布学習によって補う枠組みです。
  • UQ-SHREDはengressionというニューラルネットの分布回帰により、センサ履歴条件付きで状態の予測分布を学習し、不確実性を定量化します。
  • センサ入力にノイズを注入し、energy score lossで学習することで、追加のネットワーク構造や再学習なしに、単一アーキテクチャで予測分布を生成するための計算負荷を抑えています。
  • 合成データと実データ(乱流・大気ダイナミクス・神経科学・天文学など)で、分布近似とキャリブレーションの良い信頼区間を示し、アブレーションにより設定要因がUQ品質や妥当性に与える影響も分析しています。

Abstract

Reconstructing high-dimensional spatiotemporal fields from sparse sensor measurements is critical in a wide range of scientific applications. The SHallow REcurrent Decoder (SHRED) architecture is a recent state-of-the-art architecture that reconstructs high-quality spatial domain from hyper-sparse sensor measurement streams. An important limitation of SHRED is that in complex, data-scarce, high-frequency, or stochastic systems, portions of the spatiotemporal field must be modeled with valid uncertainty estimation. We introduce UQ-SHRED, a distributional learning framework for sparse sensing problems that provides uncertainty quantification through a neural network-based distributional regression called engression. UQ-SHRED models the uncertainty by learning the predictive distribution of the spatial state conditioned on the sensor history. By injecting stochastic noise into sensor inputs and training with an energy score loss, UQ-SHRED produces predictive distributions with minimal computational overhead, requiring only noise injection at the input and resampling through a single architecture without retraining or additional network structures. On complicated synthetic and real-life datasets including turbulent flow, atmospheric dynamics, neuroscience and astrophysics, UQ-SHRED provides a distributional approximation with well-calibrated confidence intervals. We further conduct ablation studies to understand how each model setting affects the quality of the UQ-SHRED performance, and its validity on uncertainty quantification over a set of different experimental setups.