Threshold autoregressive moving-average (TARMA) models are popular in time series analysis due to their ability to parsimoniously describe several complex dynamical features. However, neither theory nor estimation methods are currently available when the data present heavy tails or anomalous observations, which is often the case in applications. In this paper, we provide the first theoretical framework for robust M-estimation for TARMA models and also study its practical relevance. Under mild conditions, we show that the robust estimator for the threshold parameter is super-consistent, while the estimators for autoregressive and moving-average parameters are strongly consistent and asymptotically normal. The Monte Carlo study shows that the M-estimator is superior, in terms of both bias and variance, to the least squares estimator, which can be heavily affected by outliers. The findings suggest that robust M-estimation should be generally preferred to the least squares method. Finally, we apply our methodology to a set of commodity price time series; the robust TARMA fit presents smaller standard errors and leads to superior forecasting accuracy compared to the least squares fit. The results support the hypothesis of a two-regime, asymmetric nonlinearity around zero, characterised by slow expansions and fast contractions.
翻译:在时间序列分析中,阈值自动递减平均(TARMA)模型很受欢迎,因为它们有能力对若干复杂的动态特征进行分辨描述。然而,当数据显示重尾或异常观察时,目前没有理论或估计方法,这在应用中往往是这种情况。在本文件中,我们为TARMA模型的稳健M估计提供了第一个理论框架,并研究其实际相关性。在温和条件下,我们显示,强健的阈值估计仪是超均匀的,而自动递减和移动平均参数的估测仪则非常一致,且无损正常。蒙特卡洛研究显示,从偏差和差异的角度看,M-Slestator优于最小方位估测算仪,这可能会受到外部偏差的严重影响。研究结果表明,稳健的M-估测仪通常比最低方法的方法更可取。最后,我们将我们的方法应用于一套商品价格时间序列;稳健的TARMA标准差和移动平均参数显示更小的标准错误,并导致快速的精确度预测结果,与不精确度相比,最接近于最接近于最接近于平方的平方的货币的精确度。