Curve Fitting Algorithm of Functional Radiation-Response Data Using Bayesian Hierarchical Gaussian Process Regression Model

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초록

We present a nonparametric Bayesian hierarchical (NBH) model and develop a variational approximation (VA) algorithm for the curve fitting of the functional radiation response data. The NBH model is based on a Bayesian hierarchical (BH) model with a Gaussian-Inverse Wishart process (G-IWP) prior, which simultaneously smooths multiple functional observations and estimates mean-covariance functions. We use the automatic differentiation variational inference (ADVI) algorithm with a Gaussian distribution as the variational distribution for approximating the posterior distribution of parameters of interest, which is applicable to a wide class of probabilistic models and can also be implemented in Stan (a probabilistic programming system). Using the NBH model and the Gaussian ADVI algorithm, we fit a dataset for the semiconductor obtained from the radiation response map (RRM) of South Korea.

키워드

Bayes methodsData modelsComputational modelingSemiconductor device modelingApproximation algorithmsAnalytical modelsInference algorithmsBayesian hierarchical modelcurve fittingfunctional radiation dataGaussian-inverse Wishart processGaussian variational approximation algorithm
제목
Curve Fitting Algorithm of Functional Radiation-Response Data Using Bayesian Hierarchical Gaussian Process Regression Model
저자
Jung, Kwang-WooKim, JaeohJung, Ho-JinSeo, Seung-WonHong, Ji-ManBai, Hyoung-WooJo, Seongil
DOI
10.1109/ACCESS.2023.3237395
발행일
2023
유형
Article
저널명
IEEE Access
11
페이지
7109 ~ 7116