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Atribución-NoComercial-SinDerivadas 3.0 España
Abstract:
Several environmental phenomena can be described by different correlated variables
that must be considered jointly in order to be more representative of the nature of
these phenomena. For such events, identification of extremes is inappropriate if it is
basSeveral environmental phenomena can be described by different correlated variables
that must be considered jointly in order to be more representative of the nature of
these phenomena. For such events, identification of extremes is inappropriate if it is
based on marginal analysis. Extremes have usually been linked to the notion of
quantile, which is an important tool to analyze risk in the univariate setting. We
propose to identify multivariate extremes and analyze environmental phenomena in
terms of the directional multivariate quantile, which allows us to analyze the data
considering all the variables implied in the phenomena, as well as look at the data in
interesting directions that can better describe an environmental catastrophe. Since
there are many references in the literature that propose extremes detection based on
copula models, we also generalize the copula method by introducing the directional
approach. Advantages and disadvantages of the non-parametric proposal that we
introduce and the copula methods are provided in the paper. We show with simulated
and real data sets how by considering the first principal component direction we can
improve the visualization of extremes. Finally, two cases of study are analyzed: a
synthetic case of flood risk at a dam (a 3-variable case), and a real case study of sea
storms (a 5-variable case).[+][-]