Volatility for High Frequency Time Series Toward fGARCH (1,1) as a Functional Model
  • 황선영
  • 윤재은
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초록

As high frequency (HF, for short) time series is now prevalent in the presence of real time big data, volatility computations based on traditional ARCH/GARCH models need to be further developed to suit the high frequency characteristics. This article reviews realized volatilities (RV) and multivariate GARCH (MGARCH) to deal with high frequency volatility computations. As a (functional) infinite dimensional models, the fARCH and fGARCH are introduced to accommodate ultra high frequency (UHF) volatilities. The fARCH and fGARCH models are developed in the recent literature by Hormann et al. [1] and Aue et al. [2], respectively, and our discussions are mainly based on these two key articles. Real data applications to domestic UHF financial time series are illustrated.

키워드

Functional GARCH (fGARCH)High frequencyMultivariate GARCH (MGARCH)
제목
Volatility for High Frequency Time Series Toward fGARCH (1,1) as a Functional Model
저자
황선영윤재은
DOI
10.22283/qbs.2018.37.2.73
발행일
2018-11
저널명
Quantitative Bio-Science
37
2
페이지
73 ~ 79