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Azad Yazdani

Azad Yazdani

Academic rank: Professor
ORCID:
Education: PhD.
ScopusId: 7004218797
Faculty: Faculty of Engineering
Address:
Phone: +98-87-33668457

Research

Title
Multivariate Bayesian hypothesis testing for ground motion model selection
Type
JournalPaper
Keywords
Ground motion models, Ranking, Bayesian Hyopothesis testing, Bayes Factors
Year
2020
Journal JOURNAL OF SEISMOLOGY
DOI
Researchers Mohammad Sadegh Shahidzadeh ، Azad Yazdani ، Sead Nasroalla Eftekhari

Abstract

In this paper the Bayesian hypothesis testing basis is proposed for selecting, ranking and assigning weights to ground motion prediction equations that fits perfectly on the classical definition of a logic tree. The posterior probability of a model being the best model describing data is calculated and the definition of Bayes factors is used for selecting and weighting prediction models. Accounting for data correlation is important in model ranking and combination which is missing from the commonly used scoring procedures such as the median likelihood, average log-likelihood, Euclidean distance ranking and the Bayesian information criterion methods. The proposed method considers data correlation (i.e. within event and between event correlation and correlation between ordinates) by utilizing a multivariate likelihood function. While the proposed procedure is mostly objective and data-driven, the Bayesian updating rule allows for consideration of expert’s judgment by using prior probabilities. The proposed method is applied to subsets of the NGA-West2 dataset and five selected NGA-West2 models are ranked and weighted in different magnitude and period ranges according to available data.