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Functional ARCH directional dependence via copula for intraday volatility from high-frequency financial time series

Authors
Kim, Jong-MinHwang, Sun Young
Issue Date
Jan-2021
Publisher
ROUTLEDGE JOURNALS, TAYLOR & FRANCIS LTD
Keywords
Directional dependence; copula; beta regression model; functional ARCH model
Citation
APPLIED ECONOMICS, v.53, no.4, pp.506 - 520
Journal Title
APPLIED ECONOMICS
Volume
53
Number
4
Start Page
506
End Page
520
URI
https://scholarworks.sookmyung.ac.kr/handle/2020.sw.sookmyung/146848
DOI
10.1080/00036846.2020.1808184
ISSN
0003-6846
Abstract
This paper proposes a copula directional dependence by using a bivariate Gaussian copula beta regression with the functional ARCH(1) (fARCH) model to suit high-frequency time series that account for intraday volatilities. With simulated high-frequency data, we show how the copula fARCH directional dependence of intraday volatility can be useful in terms of graphical displays for tick-by-tick price changes in a day. We can perform a test of significance of the copula fARCH directional dependence of intraday volatility by the permutation test, p-value, and bootstrapping confidence interval. To validate our proposed method with real data, we use the Korea Composite Stock Price Index (KOSPI) and the Hyundai-Motor (HD-Motor) company stock data with one minute high-frequency. We show that copula fARCH directional dependence of intraday volatility by B-spline basis function is superior to that by Fourier basis function in terms of the per cent relative efficiency of bias and mean squared error. This research shows that the copula functional ARCH directional dependence of intraday volatility can be an important statistical method to illustrate the directional dependence of intraday volatility in the financial market.
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