2022
DOI: 10.1111/jiec.13339
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A hierarchical Bayesian regression model that reduces uncertainty in material demand predictions

Abstract: Predictions of metal consumption are vital for criticality assessments and sustainability analyses. Although demand for a material varies strongly by region and end‐use sector, statistical models of demand typically predict demand using regression analyses at an aggregated global level (“fully pooled models”). “Un‐pooled” regression models that predict demand at a disaggregated country or regional level face challenges due to limited data availability and large uncertainty. In this paper, we propose a Bayesian… Show more

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Cited by 4 publications
(1 citation statement)
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“…Bergman et al [32] used Bayes' rule to improve the prediction accuracy of parts for which the established demand model in the new equipment program did not have enough time to develop. Bhuwalka et al [33] proposed a Bayesian hierarchical model. This model is capable of simultaneously estimating specific demand parameters (e.g., price and income elasticities) as well as overall parameters for different regions and sectors.…”
Section: Commodity Demand Predictionmentioning
confidence: 99%
“…Bergman et al [32] used Bayes' rule to improve the prediction accuracy of parts for which the established demand model in the new equipment program did not have enough time to develop. Bhuwalka et al [33] proposed a Bayesian hierarchical model. This model is capable of simultaneously estimating specific demand parameters (e.g., price and income elasticities) as well as overall parameters for different regions and sectors.…”
Section: Commodity Demand Predictionmentioning
confidence: 99%