scholarly journals MCMC methods applied to the reconstruction of the autumn 2017 Ruthenium-106 atmospheric contamination source

2020 ◽  
Vol 6 ◽  
pp. 100071
Author(s):  
Joffrey Dumont Le Brazidec ◽  
Marc Bocquet ◽  
Olivier Saunier ◽  
Yelva Roustan
2009 ◽  
Vol 21 (4) ◽  
pp. 043302 ◽  
Author(s):  
Wenbo Tang ◽  
George Haller ◽  
Jong-Jin Baik ◽  
Young-Hee Ryu

Author(s):  
Victor K. F. Chia ◽  
Hugh E. Gotts ◽  
Fuhe Li ◽  
Mark Camenzind

Abstract Semiconductor devices are sensitive to contamination that can cause product defects and product rejects. There are many possible types and sources of contamination. Root cause resolution of the contamination source can improve yield. The purpose of contamination troubleshooting is to identify and eliminate major yield limiters. This requires the use of a variety of analytical techniques[1]. Most important, it requires an understanding of the principle of contamination troubleshooting and general knowledge of analytical tests. This paper describes a contamination troubleshooting approach with case studies as examples of its application.


2011 ◽  
Vol 45 (37) ◽  
pp. 6837-6840 ◽  
Author(s):  
J.R. Aboal ◽  
A. Pérez-Llamazares ◽  
A. Carballeira ◽  
S. Giordano ◽  
J.A. Fernández

2020 ◽  
Vol 0 (0) ◽  
Author(s):  
Marco Molinari ◽  
Maria de Iorio ◽  
Nishi Chaturvedi ◽  
Alun Hughes ◽  
Therese Tillin

AbstractWe analyse data from the Southall And Brent REvisited (SABRE) tri-ethnic study, where measurements of metabolic and anthropometric variables have been recorded. In particular, we focus on modelling the distribution of insulin resistance which is strongly associated with the development of type 2 diabetes. We propose the use of a Bayesian nonparametric prior to model the distribution of Homeostasis Model Assessment insulin resistance, as it allows for data-driven clustering of the observations. Anthropometric variables and metabolites concentrations are included as covariates in a regression framework. This strategy highlights the presence of sub-populations in the data, characterised by different levels of risk of developing type 2 diabetes across ethnicities. Posterior inference is performed through Markov Chains Monte Carlo (MCMC) methods.


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