Improving Forecast Accuracy of Financial Vulnerability: Partial Least Squares Factor Model Approach

Hyeongwoo Kim, Kyunghwan Ko
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引用次数: 3

Abstract

We present a factor augmented forecasting model for assessing the financial vulnerability in Korea. Dynamic factor models often extract latent common factors from a large panel of time series data via the method of the principal components (PC). Instead, we employ the partial least squares (PLS) method that estimates target specific common factors, utilizing covariances between predictors and the target variable. Applying PLS to 198 monthly frequency macroeconomic time series variables and the Bank of Korea's Financial Stress Index (KFSTI), our PLS factor augmented forecasting models consistently outperformed the random walk benchmark model in out-of-sample prediction exercises in all forecast horizons we considered. Our models also outperformed the autoregressive benchmark model in short-term forecast horizons. We expect our models would provide useful early warning signs of the emergence of systemic risks in Korea's financial markets.
提高金融脆弱性预测精度:偏最小二乘因子模型方法
我们提出了一个因子增强预测模型来评估韩国的金融脆弱性。动态因子模型通常通过主成分(PC)方法从大量时间序列数据中提取潜在的共同因子。相反,我们采用偏最小二乘(PLS)方法来估计目标特定的共同因素,利用预测因子和目标变量之间的协方差。将PLS应用于198个月频率宏观经济时间序列变量和韩国银行的金融压力指数(KFSTI),我们的PLS因子增强预测模型在我们考虑的所有预测范围内的样本外预测练习中始终优于随机漫步基准模型。我们的模型在短期预测范围内也优于自回归基准模型。我们希望我们的模型能够为韩国金融市场出现系统性风险提供有用的早期预警信号。
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