Extreme volatility dependence in exchange rates
Dependencia extrema de la volatilidad en los tipos de cambio
Dependência extrema da volatilidade nas taxas de câmbio
DOI:
https://doi.org/10.15446/cuadecon.v40n82.79400Palavras-chave:
Exchange Rates, Volatility Modeling, Tail Dependence (en)taxa de câmbio, modelagem de volatilidade, dependência da cauda (pt)
tipo de cambio, modelación de volatilidad, dependencia de cola (es)
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This paper aims to analyse asymmetric volatility dependence in the exchange rate between the British Pound, Japanese Yen, Euro, and Mexican Peso compared to the U.S. dollar during different periods of turmoil and calm sub-periods between (1994-2018). GARCH and TARCH models are employed to model conditional
Este artículo analiza la dependencia asimétrica de la volatilidad de los tipos de cambio entre la libra esterlina, yen japonés, euro y peso mexicano en términos del dólar americano, en un periodo que comprende episodios de calma e incertidumbre (1994-2018). Los modelos GARCH y TARCH se emplean para modelar la volatilidad del tipo de cambio. Una vez que la volatilidad se estima, se calcula la dependencia de la cola superior e inferior, para cada subperiodo: 1994-1999, 2000-2007, 2007-2012, 2013-2018. La dependencia bivariada de la volatilidad cambiaria muestra alta dependencia en la cola inferior y baja dependencia en la
cola superior.
Este artigo analisa a dependência assimétrica da volatilidade das taxas de câmbio entre a libra esterlina, o iene japonês, o euro e o peso mexicano em relação ao dólar norte-americano, em um período que inclui episódios de calma e incerteza (1994-2018). Os modelos GARCH e TARCH são usados para modelar a volatilidade da taxa de câmbio. Uma vez que a volatilidade é estimada, calcula-se a dependência da cauda superior e inferior, para cada subperíodo: 1994-1999, 2000-2007, 2007-2012, 2013-2018. A dependência bivariada da volatilidade da taxa de câmbio mostra alta dependência na cauda inferior e baixa dependência na cauda superior.
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