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首页> 外文期刊>Journal of the royal statistical society >Seasonality with trend and cycle interactions in unobserved components models
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Seasonality with trend and cycle interactions in unobserved components models

机译:未观察到的组件模型中具有趋势和周期相互作用的季节性

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Unobserved components time series models decompose a time series into a trend, a season, a cycle, an irregular disturbance and possibly other components. These models have been successfully applied to many economic time series. The standard assumption of a linear model, which is often appropriate after a logarithmic transformation of the data, facilitates estimation, testing, forecasting and interpretation. However, in some settings the linear-additive framework may be too restrictive. We formulate a non-linear unobserved components time series model which allows interactions between the trend-cycle component and the seasonal component. The resulting model is cast into a non-linear state space form and estimated by the extended Kalman filter, adapted for models with diffuse initial conditions. We apply our model to UK travel data and US unemployment and production series, and show that it can capture increasing seasonal variation and cycle-dependent seasonal fluctuations.
机译:未观察到的组件时间序列模型将时间序列分解为趋势,季节,周期,不规则干扰以及可能的其他组件。这些模型已成功应用于许多经济时间序列。线性模型的标准假设通常适用于数据的对数转换,这有助于估计,测试,预测和解释。但是,在某些情况下,线性加法框架可能过于严格。我们制定了一个非线性的不可观测成分时间序列模型,该模型允许趋势周期成分和季节成分之间的相互作用。生成的模型被转换为非线性状态空间形式,并通过扩展的Kalman滤波器进行估计,适用于具有弥散初始条件的模型。我们将模型应用于英国的旅行数据以及美国的失业和生产序列,并表明该模型可以捕获不断增加的季节性变化和周期相关的季节性波动。

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