Asymptotic Expansions for Market Risk Assessment: Evidence in Energy and Commodity Indices
- Velásquez-Gaviria, Daniel
- Mora-Valencia, Andrés
- Perote, Javier
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1
Maastricht University
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2
Universidad de Los Andes
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3
Universidad de Salamanca
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ISSN: 1431-1968
ISBN: 9783031141966, 9783031141973
Ano de publicación: 2023
Páxinas: 123-142
Tipo: Capítulo de libro
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