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Effects of asset frequency components on value-at-risk in emerging and developed markets

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  • Biage, Milton
  • Nelcide, Pierre Joseph

Abstract

Value-at-Risk was estimated using the technique of wavelet decomposition with goal to analyze the frequency components' impacts on variances of daily stock returns, and on forecasts. Daily returns of twenty-one shares of the Ibovespa and daily returns of twenty-two shares of the DJIA were used. The model was applied to the reconstructed returns to model and establish the prediction of conditional variance, applying the rolling window technique. The Value-at-Risk was then estimated, and the results showed that the DJIA shares showed more efficient market behavior than those of Ibovespa. The differences in behavior induces to affirm that VaRs, used in the analysis of financial assets from different markets with different governance premises, should be estimated by series of returns reconstructed by aggregations of components of different frequencies. A set of back-testing was applied to confront the estimated , which demonstrated that the estimation of models are consistent.

Suggested Citation

  • Biage, Milton & Nelcide, Pierre Joseph, 2020. "Effects of asset frequency components on value-at-risk in emerging and developed markets," Brazilian Review of Econometrics, Sociedade Brasileira de Econometria - SBE, vol. 40(1), August.
  • Handle: RePEc:sbe:breart:v:40:y:2020:i:1:a:77437
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