通过商业周期的行业轮换:机器学习制度方法

M. Sauer
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引用次数: 1

摘要

在不同的商业周期中,行业回报理论上应该有所不同。周期性和防御性行业的概念在从业人员和学者中都得到了明确的确立。另一方面,商业周期的持续性、现实性和可预测性已经被大量文献所记录。本研究在分析宏观经济数据的基础上,检验两者是否可以合并以构建可投资的行业轮换策略。我发现这两种关系都成立:如果一个人有关于GDP的前瞻性信息,那么行业轮换的表现就有可能胜出。此外,人们可以在一定程度上准确地预测当前在商业周期中的位置。虽然临近预测的准确性太小,无法转化为持续的优异表现,但所研究的方法的价值在于及时识别重大经济危机,并通过在此期间显着减少损失来提供经济上的卓越表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sector Rotation through the Business Cycle: A Machine Learning Regime Approach
Sector returns should theoretically differ during business cycle regimes. The notion of cyclical and defensive sectors is clearly established among practitioners and academics alike. On the other hand, the persistence, now- and forecastability of business cycles has been documented by a vast amount of literature. This study tests whether both strands can be merged to construct an investable sector rotation strategy based on the analysis of macroeconomic data. I find that both relationships hold: If one has forward looking information about GDP, outperformance from sector rotation is possible. Furthermore, one can nowcast the current position in the business cycle with some accuracy. While nowcasting accuracy is too small to translate into constant outperformance, the value of the examined methodology lies in the timely identification of major economic crises and provides economically superior performance by significantly reducing drawdowns during such.
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