Bayesian Analysis of Threshold Autoregressive Model with First Order Autoregressive Innovations

O. O. Ojo
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Abstract

Financial assets exhibit dramatic changes in behaviour. This work examined a two-regime Threshold autoregressive (TAR) models when the innovations follow a first-autoregressive order process. The Bayesian method is proposed to build in the linear first-order autoregressive process with identical distributed innovations. The practical usefulness of this method is demonstrated with simulated and real-life data using U.S.A quarterly real GDP as an example. In simulation experiments and real life example, an increase in first order process parameter, ρ value leads to better estimates in the proposed model. Also, the proposed model was compared with TAR model where the disturbance term does not exhibit regime switching. The proposed model performed well than the traditional TAR model using the simulated and real life data. An increase in first order process parameter, ρ will lead to better estimates and forecast. Hence, the proposed model performed well.
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具有一阶自回归创新的阈值自回归模型的贝叶斯分析
金融资产的行为会发生巨大变化。这项工作研究了当创新遵循一阶自回归过程时的两区间阈值自回归(TAR)模型。提出了贝叶斯方法来建立具有相同分布创新的线性一阶自回归过程。以美国季度实际 GDP 为例,通过模拟和实际数据证明了该方法的实用性。在模拟实验和实际例子中,一阶过程参数 ρ 值的增加会使所提出的模型获得更好的估计结果。此外,所提出的模型还与扰动项不表现出制度转换的 TAR 模型进行了比较。利用模拟数据和实际数据,所提出的模型比传统的 TAR 模型表现更好。一阶过程参数 ρ 的增加将带来更好的估计和预测。因此,建议的模型表现良好。
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