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Characterising economic trends by Bayesian stochastic model specification search

机译:通过贝叶斯随机模型规范搜索描述经济趋势

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摘要

A recently proposed Bayesian model selection technique, stochastic model specification search, is carried out to discriminate between two trend generation hypotheses. The first is the trend-stationary hypothesis, for which the trend is a deterministic function of time and the short run dynamics are represented by a stationary autoregressive process. The second is the difference-stationary hypothesis, according to which the trend results from the cumulation of the effects of random disturbances. A difference-stationary process may originate in two ways: from an unobserved components process adding up an integrated trend and an orthogonal transitory component, or implicitly from an autoregressive process with roots on the unit circle. The different trend generation hypotheses are nested within an encompassing linear state space model. After a reparameterisation in non-centred form, the empirical evidence supporting a particular hypothesis is obtained by performing variable selection on the model components, using a suitably designed Gibbs sampling scheme. The methodology is illustrated with reference to a set of US macroeconomic time series which includes the traditional Nelson and Plosser dataset. The conclusion is that most series are better represented by autoregressive models with time-invariant intercept and slope and coefficients that are close to boundary of the stationarity region. The posterior distribution of the autoregressive parameters provides useful insight on quasi-integrated nature of the specifications selected.
机译:进行了最近提出的贝叶斯模型选择技术,即随机模型规范搜索,以区分两个趋势生成假设。第一个是趋势平稳假设,其趋势是时间的确定性函数,短期动态由平稳的自回归过程表示。第二个是差异平稳假说,根据该假说,趋势是由随机扰动效应的累积引起的。平稳平稳过程可能以两种方式产生:来自未观察到的成分过程,将总趋势和正交瞬时成分相加,或者隐式源自以单位圆为根的自回归过程。不同的趋势生成假设嵌套在一个包含的线性状态空间模型中。在非中心形式的重新参数化之后,通过使用适当设计的吉布斯采样方案对模型组件执行变量选择,可以获得支持特定假设的经验证据。参考一组美国宏观经济时间序列(包括传统的Nelson和Plosser数据集)说明了该方法。结论是,大多数序列可以更好地用具有时不变截距和斜率且系数接近平稳区域边界的自回归模型表示。自回归参数的后验分布提供了有关所选规范的准综合性质的有用见解。

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