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Gray Box Model with an SVM to Represent the Influence of PaCO_2 on the Cerebral Blood Flow Autoregulation

机译:带有SVM的灰箱模型代表PaCO_2对脑血流量自动调节的影响

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摘要

Since the appearance of methods based on machine learning, they have been presented as an alternative to classical phenomenological modeling and there are few initiatives that attempt to integrate them. This paper presents a hybrid paradigm called gray box that blends a phenomenological description (differential equation) and a Support Vector Machine (SVM) to model a relevant problem in the field of cerebral hemodynamic. The results show that with this type of paradigm it is possible to exceed the results obtained with phenomenological models and also with the models based on learning, in addition to contributing to the description of the modelled phenomenon.
机译:自从基于机器学习的方法问世以来,它们已被提出作为经典现象学建模的替代方法,并且很少有尝试将它们集成在一起。本文提出了一种称为灰色框的混合范例,该范例将现象学描述(微分方程)和支持向量机(SVM)混合在一起,以对脑血流动力学领域的相关问题进行建模。结果表明,使用这种范式可以超越现象学模型以及基于学习的模型获得的结果,此外还有助于描述建模现象。

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