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dc.contributor.authorPauwels, Laurent
dc.contributor.authorRadchenko, Peter
dc.contributor.authorVasnev, Andrey
dc.date.accessioned2020-05-01
dc.date.available2020-05-01
dc.date.issued2020-05-01
dc.identifier.urihttps://hdl.handle.net/2123/22140
dc.description.abstractThe majority of financial data exhibit asymmetry and heavy tails, which makes forecasting the entire density critically important. Recently, a forecast combination methodology has been developed to combine predictive densities. We show that combining individual predictive densities that are skewed and/or heavy-tailed results in significantly reduced skewness and kurtosis. We propose a solution to over- come this problem by deriving optimal log score weights under Higher-order Moment Constraints (HMC). The statistical properties of these weights are investigated theoretically and through a simulation study. Consistency and asymptotic distribution results for the optimal log score weights with and without high moment constraints are derived. An empirical application that uses the S&P 500 daily index returns illustrates that the proposed HMC weight density combinations perform very well relative to other combination methods.en_AU
dc.language.isoen_AUen_AU
dc.relation.ispartofseriesJEL Codes: C53, C58en_AU
dc.subjectForecast combinationsen_AU
dc.subjectPredictive densitiesen_AU
dc.subjectMoment constraintsen_AU
dc.subjectFinancial dataen_AU
dc.titleHigher Moment Constraints for Predictive Density Combinationsen_AU
dc.typeArticleen_AU
usyd.departmentBusiness Analyticsen_AU


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