...
首页> 外文期刊>Empirical Economics >Stochastic trends and seasonality in economic time series: new evidence from Bayesian stochastic model specification search
【24h】

Stochastic trends and seasonality in economic time series: new evidence from Bayesian stochastic model specification search

机译:经济时间序列中的随机趋势和季节性:贝叶斯随机模型规范搜索的新证据

获取原文
获取原文并翻译 | 示例

摘要

An important issue in modelling economic time series is whether key unobserved components representing trends, seasonality and calendar components, are deterministic or evolutive. We address it by applying a recently proposed Bayesian variable selection methodology to an encompassing linear mixed model that features, along with deterministic effects, additional random explanatory variables that account for the evolution of the underlying level, slope, seasonality and trading days. Variable selection is performed by estimating the posterior model probabilities using a suitable Gibbs sampling scheme. The paper conducts an extensive empirical application on a large and representative set of monthly time series concerning industrial production and retail turnover. We find strong support for the presence of stochastic trends in the series, either in the form of a time-varying level, or, less frequently, of a stochastic slope, or both. Seasonality is a more stable component, although in at least 60 % of the cases we were able to select one or more stochastic trigonometric cycles. Most frequently the time variation is found in correspondence with the fundamental and the first harmonic cycles. An interesting and intuitively plausible finding is that the probability of estimating time-varying components increases with the sample size available. However, even for very large sample sizes we were unable to find stochastically varying calendar effects.
机译:在对经济时间序列进行建模时,一个重要的问题是代表趋势,季节性和日历成分的关键未观察成分是确定性的还是演化性的。我们通过将最近提出的贝叶斯变量选择方法应用于涵盖范围的线性混合模型来解决此问题,该模型具有确定性效应以及确定基础水平,坡度,季节性和交易日的演变的附加随机解释变量。通过使用合适的吉布斯采样方案估计后验模型概率来执行变量选择。本文对涉及工业生产和零售营业额的大量且具有代表性的每月时间序列进行了广泛的经验应用。我们发现该序列中存在随机趋势的有力支持,要么以时变水平的形式出现,要么以随机斜率的形式出现,或者两者都不是。季节性是更稳定的组成部分,尽管在至少60%的情况下,我们能够选择一个或多个随机三角函数周期。最常见的是发现时间变化与基波和一次谐波周期相对应。一个有趣且直观的合理发现是,估算时变分量的概率随可用样本量的增加而增加。但是,即使对于非常大的样本量,我们也无法找到随机变化的日历效果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号