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Estimation of level and change for unemployment using structural time series models

机译:使用结构时间序列模型估算水平和失业变化的变化

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Monthly estimates of provincial unemployment based on the Dutch Labour Force Survey (LFS) are obtained using time series models. The models account for rotation group bias and serial correlation due to the rotating panel design of the LFS. This paper compares two approaches of estimating structural time series models (STM). In the first approach STMs are expressed as state space models, fitted using a Kalman filter and smoother in a frequentist framework. As an alternative, these STMs are expressed as time series multilevel models in an hierarchical Bayesian framework, and estimated using a Gibbs sampler. Monthly unemployment estimates and standard errors based on these models are compared for the twelve provinces of the Netherlands. Pros and cons of the multilevel approach and state space approach are discussed.Multivariate STMs are appropriate to borrow strength over time and space. Modeling the full correlation matrix between time series components rapidly increases the numbers of hyperparameters to be estimated. Modeling common factors is one possibility to obtain more parsimonious models that still account for cross-sectional correlation. In this paper an even more parsimonious approach is proposed, where domains share one overall trend, and have their own independent trends for the domain-specific deviations from this overall trend. The time series modeling approach is particularly appropriate to estimate month-to-month change of unemployment.
机译:使用时间序列模型获得基于荷兰劳动力调查(LFS)的省级失业的每月估计。由于LFS的旋转面板设计,模型用于旋转组偏置和串联相关性。本文比较了两种估算结构时间序列模型(STM)的方法。在第一种方法中,STMS表示为状态空间模型,使用Kalman滤波器和频繁框架中的更顺畅。作为替代方案,这些STM表示为分层贝叶斯框架中的时间序列多级模型,并使用GIBBS采样器估计。比较了根据这些模型的每月失业估计和标准误差,并达到荷兰十二省。讨论了多级方法和国家空间方法的优缺点.Multivariate STMS适合随时间和空间借用实力。建模时间序列组件之间的完整相关矩阵快速增加要估计的超参数的数量。建模普通因素是获得更加解析的模型,仍可占横截面相关性。在本文中,提出了一个更加令人置捉渐报的方法,域名共享一个整体趋势,并拥有自身独立趋势,从这一整体趋势方面的域特定偏差。时间序列建模方法特别适合估算失业率的月份变更。

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