金融状况和经济活动:来自机器学习的见解

Michael T. Kiley
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引用次数: 2

摘要

机器学习(ML)技术用于构建金融状况指数(FCI)。ML-FCI的组成部分是根据它们预测未来一年失业率的能力来选择的。对于宏观经济学和大数据集的变量选择/降维有三个教训。首先,变量转换可以驱动结果,强调在选择转换时需要透明度和对一系列合理选择的鲁棒性。其次,金融变量与经济活动之间存在明显的非线性关系——紧缩的金融状况与经济活动的急剧恶化有关,宽松的金融状况与经济活动的适度改善有关。最后,与其他指标相比,ML-FCI对股价和期限价差具有相当大的权重。与国家金融状况指数(NFCI)相比,这些经验教训得出的ML-FCI显示,在20世纪90年代初和21世纪初的衰退之前,金融状况收紧。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial Conditions and Economic Activity: Insights from Machine Learning
Machine learning (ML) techniques are used to construct a financial conditions index (FCI). The components of the ML-FCI are selected based on their ability to predict the unemployment rate one-year ahead. Three lessons for macroeconomics and variable selection/dimension reduction with large datasets emerge. First, variable transformations can drive results, emphasizing the need for transparency in selection of transformations and robustness to a range of reasonable choices. Second, there is strong evidence of nonlinearity in the relationship between financial variables and economic activity—tight financial conditions are associated with sharp deteriorations in economic activity and accommodative conditions are associated with only modest improvements in activity. Finally, the ML-FCI places sizable weight on equity prices and term spreads, in contrast to other measures. These lessons yield an ML-FCI showing tightening in financial conditions before the early 1990s and early 2000s recessions, in contrast to the National Financial Conditions Index (NFCI).
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