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Boxplot of marginal coverage for different sample sizes and , 0.1, and 0.5 of our first algorithm, CUQDyn1, for different noise levels (, , , and ).

Boxplot of marginal coverage for different sample sizes and , 0.1, and 0.5 of our first algorithm, CUQDyn1, for different noise levels (, , , and ).

<p>The results remain very stable across all examined cases.</p>

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Bibliographic Details
Main Author: Alberto Portela (21349980) (author)
Other Authors: Julio R. Banga (8131953) (author), Marcos Matabuena (6984305) (author)
Published: 2025
Subjects:
Medicine
Biotechnology
Computational Biology
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Information Systems not elsewhere classified
several illustrative scenarios
posing significant challenges
computational model predictions
complex biological systems
reliable uncertainty calibration
robust uq enables
conventional bayesian methods
bayesian statistical methods
dynamic biological systems
art uq approaches
bayesian methods
systems biology
uncertainty quantification
dynamic models
systematically determining
system dynamics
seeking rapid
scale models
provide non
predictive tasks
predictive models
parameter sensitivities
parameter distributions
often require
many state
improving robustness
deeper understanding
critical due
conformal prediction
conformal algorithms
computationally expensive
asymptotic guarantees
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