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Extreme Value Estimation for Heterogeneous Data

dataset
posted on 2021-12-03, 19:20 authored by John H.J. Einmahl, Yi He

We develop a universal econometric formulation of empirical power laws possibly driven by parameter heterogeneity. Our approach extends classical extreme value theory to specifying the tail behavior of the empirical distribution of a general data set with possibly heterogeneous marginal distributions. We discuss several model examples that satisfy our conditions and demonstrate in simulations how heterogeneity may generate empirical power laws. We observe a cross-sectional power law for US stock losses and show that this tail behavior is largely driven by the heterogeneous volatilities of the individual assets.

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    Journal of Business & Economic Statistics

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