基于回溯检验的金融时间序列分析

Monday Osagie Adenomon
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摘要

本章研究了回溯检验方法在金融时间序列分析中选择可靠的广义自回归条件异方差(GARCH)模型来分析尼日利亚股票收益的地位。为了实现这一点,本章使用了从www.cashcraft.com收集的股票趋势和分析的辅助数据。从2004年10月21日至2017年5月8日,每日股票价格收集在Zenith银行股票价格上。本章使用了九种不同的GARCH模型(标准GARCH (sGARCH)、glosten - jagannahn - runkle GARCH (gjrGARCH)、指数GARCH (Egarch)、积分GARCH (iGARCH)、非对称功率自回归条件异方差(ARCH) (apARCH)、阈值GARCH (TGARCH)、非线性GARCH (NGARCH)、非线性(不对称)GARCH (NAGARCH)和最大滞后为2的绝对值GARCH (AVGARCH))。由于缺乏收敛性,大多数sGARCH模型的信息标准是不可用的。最低信息标准与学生t分布的apARCH(2,2)相关,其次是学生t分布偏态的NGARCH(2,1)。学生t分布偏态的eGARCH(1,1)、学生t分布偏态的NGARCH(1,1)、学生t分布偏态的NGARCH(2,1)、学生t分布偏态的NGARCH(1,1)、学生t分布偏态的NGARCH(1,1)、学生t分布偏态的eGARCH(1,1)通过了回溯检验,学生t分布偏态的eGARCH(1,1)通过了回溯检验。因此,通过回溯检验方法,学生分布的eGARCH(1,1)成为建模尼日利亚Zenith银行股票收益的最佳模型。本章推荐采用回溯测试的方法来选择可靠的GARCH模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial Time Series Analysis via Backtesting Approach
This book chapter investigated the place of backtesting approach in financial time series analysis in choosing a reliable Generalized Auto-Regressive Conditional Heteroscedastic (GARCH) Model to analyze stock returns in Nigeria. To achieve this, The chapter used a secondary data that was collected from www.cashcraft.com under stock trend and analysis. Daily stock price was collected on Zenith bank stock price from October 21st 2004 to May 8th 2017. The chapter used nine different GARCH models (standard GARCH (sGARCH), Glosten-Jagannathan-Runkle GARCH (gjrGARCH), Exponential GARCH (Egarch), Integrated GARCH (iGARCH), Asymmetric Power Autoregressive Conditional Heteroskedasticity (ARCH) (apARCH), Threshold GARCH (TGARCH), Non-linear GARCH (NGARCH), Nonlinear (Asymmetric) GARCH (NAGARCH) and The Absolute Value GARCH (AVGARCH) with maximum lag of 2. Most the information criteria for the sGARCH model were not available due to lack of convergence. The lowest information criteria were associated with apARCH (2,2) with Student t-distribution followed by NGARCH(2,1) with skewed student t-distribution. The backtesting result of the apARCH (2,2) was not available while eGARCH(1,1) with Skewed student t-distribution, NGARCH(1,1), NGARCH(2,1), and TGARCH (2,1) failed the backtesting but eGARCH (1,1) with student t-distribution passed the backtesting approach. Therefore with the backtesting approach, eGARCH(1,1) with student distribution emerged the superior model for modeling Zenith Bank stock returns in Nigeria. This chapter recommended the backtesting approach to selecting reliable GARCH model.
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