Chang Le, Shi Yanlin
Research School of Finance, Actuarial Studies and Statistics, Australian National University, Canberra, ACT 2601 Australia.
Department of Actuarial Studies and Business Analytics, Macquarie University, Sydney, NSW 2109 Australia.
Ann Oper Res. 2022 Aug 18:1-31. doi: 10.1007/s10479-022-04919-6.
The vector autoregressive (VAR) model has been popularly employed in operational practice to study multivariate time series. Despite its usefulness in providing associated metrics such as the impulse response function (IRF) and forecast error variance decomposition (FEVD), the traditional VAR model estimated via the usual ordinary least squares is vulnerable to outliers. To handle potential outliers in multivariate time series, this paper investigates two robust estimation methods of the VAR model, the reweighted multivariate least trimmed squares and the multivariate MM-estimation. The robust information criteria are also proposed to select the appropriate number of temporal lags. Via extensive simulation studies, we show that the robust VAR models lead to much more accurate estimates than the original VAR in the presence of outliers. Our empirical results include logged daily realized volatilities of six common safe haven assets: futures of gold, silver, Brent oil and West Texas Intermediate (WTI) oil and currencies of Swiss Francs and Japanese Yen. Our sample covers July 2017-June 2020, which includes the history-writing price drop of WTI on April 20, 2020. Our baseline results suggest that the traditional VAR model may significantly overestimate some parameters, as well as IRF and FEVD metrics. In contrast, robust VAR models provide more reliable results, the validity of which is verified via various approaches. Empirical implications based on robust estimates are further illustrated.
向量自回归(VAR)模型在运营实践中被广泛用于研究多元时间序列。尽管它在提供诸如脉冲响应函数(IRF)和预测误差方差分解(FEVD)等相关指标方面很有用,但通过常规普通最小二乘法估计的传统VAR模型容易受到异常值的影响。为了处理多元时间序列中的潜在异常值,本文研究了VAR模型的两种稳健估计方法,即重新加权多元最小截尾二乘法和多元MM估计法。还提出了稳健的信息准则来选择合适的时间滞后数量。通过广泛的模拟研究,我们表明在存在异常值的情况下,稳健的VAR模型比原始VAR模型能得出更准确的估计。我们的实证结果包括六种常见避险资产的每日已实现波动率对数:黄金、白银、布伦特原油和西德克萨斯中质原油(WTI)的期货以及瑞士法郎和日元的货币。我们的样本涵盖2017年7月至2020年6月,其中包括2020年4月20日WTI创历史记录的价格下跌。我们的基线结果表明,传统VAR模型可能会显著高估一些参数以及IRF和FEVD指标。相比之下,稳健的VAR模型提供了更可靠的结果,其有效性通过各种方法得到了验证。基于稳健估计的实证意义也得到了进一步说明。