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Incorporating Background Knowledge for Better Prediction of Cycle Phases

机译:结合背景知识以更好地预测循环阶段

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摘要

When predicting the state of a system, we sometimes know that the succession of states is cyclic. This is for example true for the prediction of business cycle phases, where an upswing is always followed by upper turning points, and the subsequent downswing passes via lower turning points over to the next upswing and so on. We present several ideas of how to implement this background knowledge in popular static classification methods. Additionally, we present a full dynamic model. The usefulness for the prediction of business cycles is investigated, revealing pitfalls and potential benefits of ideas.
机译:在预测系统状态时,我们有时会知道状态的继承是循环的。例如,在预测业务周期阶段时,这是正确的,在该阶段中,总是在上升之后跟随较高的拐点,随后的下降通过较低的拐点传递至下一个上升等。我们提出了一些关于如何在流行的静态分类方法中实现这一背景知识的想法。此外,我们提出了一个完整的动态模型。调查了预测商业周期的有用性,揭示了陷阱和想法的潜在好处。

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