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Learning Trend Inflation: Can Signal Extraction Explain Survey Forecasts?

机译:学习趋势通胀:信号提取可以解释调查预测吗?

摘要

It can be shown that inflation expectations and associated forecast errors are characterized by a high degree of persistence. One reason may be that forecasters cannot directly observe the inflation target pursued by the central bank and, hence, face a complicated forecasting problem. In particular, they have to infer whether the observed movement ofthe inflation rate is due to a permanent change of policy parameters or whether it is the result of a transient shock. Consequently, it is assumed that agents behave like econometricians who filter noisy information by estimating an unobserved components model. This constitutes the trend learning algorithm employed by the forecaster. To examine whether this is a valid assumption, I fit a simple learning model to US survey expectations. The second part contains an out-of-sample forecasting experiment which shows that learning by signal extraction matches survey measures closer than other standard models. Moreover, it turns out that a weighted average of different expectation formation processes with a prominent role for signal extraction behaviour is well suited to explain survey measures of inflation expectations.
机译:可以证明,通货膨胀预期和相关的预测误差的特征是高度持久性。原因之一可能是预测者无法直接观察央行追求的通胀目标,因此面临着复杂的预测问题。特别是,他们必须推断观察到的通货膨胀率的变化是由于政策参数的永久性变化,还是由于短暂冲击的结果。因此,假定代理的行为类似于计量经济学家,他们通过估计未观察到的组件模型来过滤噪声信息。这构成了预测器采用的趋势学习算法。为了检验这是否是一个有效的假设,我将一种简单的学习模型与美国的调查预期相吻合。第二部分包含样本外预测实验,该实验表明,通过信号提取进行的学习比其他标准模型更接近于调查措施。此外,事实证明,对信号提取行为起显著作用的不同期望形成过程的加权平均值非常适合于解释通货膨胀期望的测量方法。

著录项

  • 作者

    Henzel Steffen;

  • 作者单位
  • 年度 2008
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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