资源论文Probabilistic Models for Integration Error in the Assessment of Functional Cardiac Models

Probabilistic Models for Integration Error in the Assessment of Functional Cardiac Models

2020-02-10 | |  46 |   36 |   0

Abstract 

This paper studies the numerical computation of integrals, representing estimates or predictions, over the output f (x) of a computational model with respect to a distribution p(dx) over uncertain inputs x to the model. For the functional cardiac models that motivate this work, neither f nor p possess a closed-form expression and evaluation of either requires image.png 100 CPU hours, precluding standard numerical integration methods. Our proposal is to treat integration as an estimation problem, with a joint model for both the a priori unknown function f and the a priori unknown distribution p. The result is a posterior distribution over the integral that explicitly accounts for dual sources of numerical approximation error due to a severely limited computational budget. This construction is applied to account, in a statistically principled manner, for the impact of numerical errors that (at present) are confounding factors in functional cardiac model assessment.

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