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Editor's Special Invited Paper: Sequential Estimation for Time Series Models

机译:编者的特邀论文:时间序列模型的顺序估计

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摘要

This article revisits sequential estimation of the autoregressive parameter β in a first-order autoregressive (AR(1)) model and construction of a sequential confidence region for a parameter vector θ in a first-order threshold autoregressive (TAR(1)) model. To resolve a theoretical conjecture raised in Sriram (1986), we provide a comprehensive numerical study that strongly suggests that the regret in using a sequential estimator of β can be significantly negative for many heavy-tailed error distributions and even for normal errors. Secondly, to investigate yet another conjecture about the limiting distribution of a sequential pivotal quantity for θ in a TAR(1) model, we conduct an extensive numerical study that strongly suggests that the sequential confidence region has much better coverage probability than that of a fixed sample counterpart, regardless of whether the θ values are inside or on or near the boundary of the ergodic region of the series. These highlight the usefulness of sequential sampling methods in fitting linear and nonlinear time series models.
机译:本文回顾了一阶自回归(AR(1))模型中自回归参数β的顺序估计,以及一阶阈值自回归(TAR(1))模型中参数向量θ的顺序置信区域的构造。为了解决在Sriram(1986)中提出的理论猜想,我们提供了一项全面的数值研究,该研究强烈表明,对于许多重尾误差分布,甚至对于正态误差,使用β的序列估计量后悔都可能显着为负。其次,为了研究关于TAR(1)模型中θ的顺序枢轴量的极限分布的另一个猜想,我们进行了广泛的数值研究,强烈暗示了顺序置信区域的覆盖概率比固定范围的概率大得多。无论θ值是在序列的遍历区域的边界之内还是之上或附近,都与样本对应。这些强调了顺序采样方法在拟合线性和非线性时间序列模型中的有用性。

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