Possibilistic Predictive Uncertainty for Deep Learning 文章

ArXiv CS.CV2026-06-02NEWSen作者: Yao Ni, Jeremie Houssineau, Yew Soon Ong, Piotr Koniusz

摘要

arXiv:2605.00600v2 Announce Type: replace-cross Abstract: Deep neural networks achieve impressive results across diverse applications, yet their overconfidence on unseen inputs necessitates reliable epistemic uncertainty modeling. Existing methods for uncertainty modeling face a fundamental dilemma: Bayesian approaches provide principled estimates but remain computationally prohibitive, while efficient second-order predictors lack rigorous connections between their specific objectives and epistemic uncertainty quantification. To resolve this dilemma, we introduce Dirichlet-approximated possibilistic posterior predictions (DAPPr), a principled framework grounded in possibility theory. We define a possibilistic posterior over parameters, project it to the prediction space via supremum operators, and approximate the projected posterior using learnable Dirichlet possibility functions. This projection-and-approximation strategy yields a simple training objective with closed-form solutions.

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Possibilistic Predictive Uncertainty for Deep Learning
2026-06-02PRODUCT_LAUNCH影响: MEDIUM

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