Transporting Causal Effects Across Populations Using Structural Causal Modeling: The Example of Work-From-Home Productivity
In: Forthcoming at Information Systems Research
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In: Forthcoming at Information Systems Research
SSRN
In: Materials and design, Band 227, S. 111695
ISSN: 1873-4197
In: Science and technology of nuclear installations, Band 2014, S. 1-12
ISSN: 1687-6083
Most of the nuclear accident reports used to indicate the implicit precursors which are not easily quantified as underlying factors. The current Probabilistic Safety Assessment (PSA) is capable of quantifying the importance of accident causes in limited scope. It was, therefore, difficult to achieve quantifiable decision-making for resource allocation. In this study, the methodology which facilitates quantifying these precursors and a case study were presented. First, four implicit precursors have been obtained by evaluating the causality and hierarchy structure of various accident factors. Eventually, it turned out that they represent the lack of knowledge. After four precursors are selected, subprecursors were investigated and their cause-consequence relationship was implemented by Bayesian Belief Network (BBN). To prioritize the precursors, the prior probability is initially estimated by expert judgment and updated upon observations. The pair-wise importance between precursors is calculated by Analytic Hierarchy Process (AHP) and the results are converted into node probability tables of the BBN model. Using this method, the sensitivity and the posterior probability of each precursor can be analyzed so that it enables making prioritization for the factors. We tried to prioritize the lessons learned from Fukushima accident to demonstrate the feasibility of the proposed methodology.
In: Materials and design, Band 246, S. 113335
ISSN: 1873-4197
In: STOTEN-D-21-26956
SSRN
In: Ecotoxicology and environmental safety: EES ; official journal of the International Society of Ecotoxicology and Environmental safety, Band 282, S. 116738
ISSN: 1090-2414