不完整数据环境下的财务状况指数

Miguel C. Herculano, Punnoose Jacob
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摘要

我们利用具有大量缺失观测数据的数据集构建了美国金融状况指数(FCI)。概率主成分技术与贝叶斯因子增强 VAR 模型的新颖结合,解决了高频数据集中数据点缺失所带来的挑战。即使有多达 62% 的数据缺失,新方法也能产生噪声较小的 FCI,在样本内和样本外都能更准确地跟踪 22 个基础金融变量的变动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial Condition Indices in an Incomplete Data Environment
We construct a Financial Conditions Index (FCI) for the United States using a dataset that features many missing observations. The novel combination of probabilistic principal component techniques and a Bayesian factor-augmented VAR model resolves the challenges posed by data points being unavailable within a high-frequency dataset. Even with up to 62 % of the data missing, the new approach yields a less noisy FCI that tracks the movement of 22 underlying financial variables more accurately both in-sample and out-of-sample.
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