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Probabilistic parameter estimation using a Gaussian mixture density network: application to X-ray reflectivity data curve fitting

Authors
Kim, Kook TaeLee, Dong Ryeol
Issue Date
Dec-2021
Publisher
INT UNION CRYSTALLOGRAPHY
Keywords
X-ray reflectivity; mixture density networks; artificial neural networks; confidence intervals; machine learning
Citation
JOURNAL OF APPLIED CRYSTALLOGRAPHY, v.54, pp.1572 - 1579
Journal Title
JOURNAL OF APPLIED CRYSTALLOGRAPHY
Volume
54
Start Page
1572
End Page
1579
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/41842
DOI
10.1107/S1600576721009043
ISSN
0021-8898
Abstract
X-ray reflectivity (XRR) is widely used for thin-film structure analysis, and XRR data analysis involves minimizing the difference between experimental data and an XRR curve calculated from model parameters describing the thin-film structure. This analysis takes a certain amount of time because it involves many unavoidable iterations. However, the recently introduced artificial neural network (ANN) method can dramatically reduce the analysis time in the case of repeated analyses of similar samples. Here, the analysis of XRR data using a mixture density network (MDN) is demonstrated, which enables probabilistic prediction while maintaining the advantages of an ANN. First, under the assumption of a unimodal probability distribution of the output parameter, the trained MDN can estimate the best-fit parameter and, at the same time, estimate the confidence interval (CI) corresponding to the error bar of the best-fit parameter. The CI obtained in this manner is similar to that obtained using the Neumann process, a well known statistical method. Next, the MDN method provides several possible solutions for each parameter in the case of a multimodal distribution of the output parameters. An unsupervised machine learning method is used to cluster possible parameter sets in order of probability. Determining the true value by examining the candidates of the parameter sets obtained in this manner can help solve the inherent inverse problem associated with scattering data.
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