Conformalized Quantum DeepONet Ensembles for Scalable Operator Learning with Distribution-Free Uncertainty
arXiv cs.LG / 5/4/2026
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Key Points
- The paper introduces “Conformalized Quantum DeepONet Ensembles,” a framework for operator learning that improves scalability and uncertainty reliability in safety-critical surrogate modeling.
- It uses Quantum Orthogonal Neural Networks (QOrthoNNs) to reduce operator inference complexity from O(n^2) to O(n), enabling scalable evaluation on fine discretizations.
- For rigorous uncertainty quantification, it combines ensemble-based epistemic modeling with adaptive conformal prediction to provide distribution-free coverage guarantees.
- To address the hardware cost of naive parallel ensembling, it employs Superposed Parameterized Quantum Circuits (SPQCs) that compress many ensemble members into a single circuit for simultaneous multi-model execution.
- Experiments on synthetic PDEs and real-world power system dynamics show accurate predictions and calibrated, uncertainty-aware performance even under realistic quantum noise.
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