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ARMA-GARCH 모형에 의한 중국 금 선물 시장 가격 변동에 대한 분석 및 예측Volatility analysis and Prediction Based on ARMA-GARCH-type Models: Evidence from the Chinese Gold Futures Market

Other Titles
Volatility analysis and Prediction Based on ARMA-GARCH-type Models: Evidence from the Chinese Gold Futures Market
Authors
이몽화김석태
Issue Date
Jun-2022
Publisher
한국무역학회
Keywords
ARIMA-GARCH; Forecasting; Gold Futures Price; Volatility
Citation
무역학회지, v.47, no.3, pp 211 - 232
Pages
22
Indexed
KCI
Journal Title
무역학회지
Volume
47
Number
3
Start Page
211
End Page
232
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/3077
DOI
10.22659/KTRA.2022.47.3.211
ISSN
1226-2765
Abstract
Due to the impact of the public health event COVID-19 epidemic, the Chinese futures market showed "Black Swan". This has brought the unpredictable into the economic environment with many commodities falling by the daily limit, while gold performed well and closed in the sunshine(Yan-Li and Rui Qian-Wang, 2020). Volatility is integral part of financial market. As an emerging market and a special precious metal, it is important to forecast return of gold futures price. This study selected data of the SHFE gold futures returns and conducted an empirical analysis based on the generalised autoregressive conditional heteroskedasticity (GARCH)-type model. Comparing the statistics of AIC, SC and H-QC, ARMA (12,9) model was selected as the best model. But serial correlation in the squared returns suggests conditional heteroskedasticity. Next part we established the autoregressive moving average ARMA-GARCH-type model to analysis whether Volatility Clustering and the leverage effect exist in the Chinese gold futures market. we consider three different distributions of innovation to explain fat-tailed features of financial returns. Additionally, the error degree and prediction results of different models were evaluated in terms of mean squared error (MSE), mean absolute error (MAE), Theil inequality coefficient(TIC) and root mean-squared error (RMSE). The results show that the ARMA(12,9)-TGARCH(2,2) model under Student’s t-distribution outperforms other models when predicting the Chinese gold futures return series.
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