Klueppelberg, ClaudiaKrali, Mario2021-03-262021-03-262021-03-262021-01-0110.1016/j.jmva.2020.104672https://infoscience.epfl.ch/handle/20.500.14299/176324WOS:000592400900009A recursive max-linear vector models causal dependence between its components by expressing each node variable as a max-linear function of its parental nodes in a directed acyclic graph and some exogenous innovation. Motivated by extreme value theory, innovations are assumed to have regularly varying distribution tails. We propose a scaling technique in order to determine a causal order of the node variables. All dependence parameters are then estimated from the estimated scalings. Furthermore, we prove asymptotic normality of the estimated scalings and dependence parameters based on asymptotic normality of the empirical spectral measure. Finally, we apply our structure learning and estimation algorithm to financial data and food dietary interview data. (C) 2020 Elsevier Inc. All rights reserved.Statistics & ProbabilityMathematicsbayesian networkcausal orderdirected acyclic graphextreme value statisticsgraphical modelrecursive max-linear modelregular variationstructural equation modelstructure learningtail dependenceEstimating an extreme Bayesian network via scalingstext::journal::journal article::research article