Regressions under Adverse Conditions
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Series
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Speaker(s)Yannick Hoga (University of Duisburg-Essen, Germany)
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FieldEconometrics, Data Science and Econometrics
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LocationUniversity of Amsterdam, Room E5.22
Amsterdam -
Date and time
September 22, 2023
12:30 - 13:30
Abstract
We introduce a new regression method that relates
the mean of an outcome variable to covariates, given the "adverse
condition'' that a distress variable falls in its tail. This allows to
tailor classical mean regressions to adverse economic scenarios, which receive
increasing interest in managing macroeconomic and financial risks, among many
others. In the terminology of the systemic risk literature, our method can
be interpreted as a regression for the Marginal Expected Shortfall. We propose
a two-step procedure to estimate the new models, show consistency and
asymptotic normality of the estimator, and propose feasible inference under
weak conditions allowing for cross-sectional and time series
applications.
The accuracy of the asymptotic approximations of the two-step estimator is verified in simulations. Three empirical applications show that our regressions under adverse conditions are valuable in such diverse fields as the study of the relation between systemic risk and asset price bubbles, portfolio optimization and dissecting macroeconomic growth vulnerabilities into individual components.