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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
dc.language.isoen_AUen
dc.relation.ispartofseriesBAWPen
dc.rightsOtheren
dc.subjectForecast combinationsen
dc.subjectPredictive densitiesen
dc.subjectMoment constraintsen
dc.subjectFinancial dataen
dc.titleHigher Moment Constraints for Predictive Density Combinationsen
dc.typeArticleen
usyd.facultyThe University of Sydney Business School, Discipline of Business Analyticsen
usyd.departmentBusiness Analyticsen
usyd.citation.volume2020-01en


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