Medición del riesgo de la cola en el mercado del petróleo mexicano aplicando la teoría de valores extremos condicional

Autores/as

  • Raúl De Jesús Gutiérrez Facultad de Economía, Universidad Autónoma del Estado de México
  • Edgar Ortiz Calisto Facultad de Ciencias Políticas y Sociales, Universidad Nacional Autónoma de México, UNAM
  • Oswaldo García Salgado Facultad de Economía, Universidad Autónoma del Estado de México
  • Verónica Ángeles Morales Facultad de Economía, Universidad Autónoma del Estado de México

DOI:

https://doi.org/10.18381/eq.v13i2.6022

Palabras clave:

Crude oil, Conditional extreme value theory, VaR and ES measures

Resumen

This paper applies the extreme values theory to the conditional distribution of standardized residuals from the specifications GARCH, EGARCH and TGARCH, and proposes dynamic risk measures to estimate VaR and expected shortfall of long and short positions of the Mexican Blend crude oil from January 4, 1989 to December 31, 2013. The results of backtesting procedure show that the models based on the conditional extreme value theory and filtered historical simulation yield more accurate estimates of conditional VaR at all confidence levels although their performance is lowered significantly for the conditional expected shortfall prediction. At 99.5% and 99.9% confidence levels, the empirical findings reveal that the government is prone to experience a higher risk than the consumers of Mexican crude oil at the international market because the inferior tail of empirical distribution is more stable and heavier than the superior tail.

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Citas

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Publicado

2016-08-21

Cómo citar

De Jesús Gutiérrez, R., Ortiz Calisto, E., García Salgado, O., & Ángeles Morales, V. (2016). Medición del riesgo de la cola en el mercado del petróleo mexicano aplicando la teoría de valores extremos condicional. EconoQuantum, 13(2), 77–98. https://doi.org/10.18381/eq.v13i2.6022

Métrica

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