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Machine Learning for Classification of Economic Recessions

机译:经济衰退分类机器学习

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The ability to quickly and accurately classify economic activity into periods of recession and expansion is of great interest to economists and policy makers. Machine Learning methods can potentially be applied to the classification of business cycles. This paper describes two machine learning methods, K-Nearest Neighbor and Neural Networks, and compares them to a Dynamic Factor Markov Switching model for determining business cycle turning points. We conclude that machine learning techniques can offer more accurate classifiers that are worthy of additional study.
机译:快速准确地将经济活动分类为经济衰退和扩张时期的能力对经济学家和政策制定者具有极大的兴趣。机器学习方法可能适用于商业周期的分类。本文介绍了两种机器学习方法,k最近邻居和神经网络,并将其与动态因子Markov交换模型进行比较,用于确定业务周期转折点。我们得出结论,机器学习技术可以提供更准确的分类器,这些分类值得额外的研究。

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