使用聚焦评分规则组合密度预测

Combining density forecasts using focused scoring rules

Journal of Applied Econometrics · 2017
被引 6
人大 AABS 3

中文导读

研究了针对特定区域优化权重的密度预测组合方法,发现基于截断似然评分规则的组合在股市下行风险测量中显著优于等权重和其他评分规则方法。

Abstract

Summary We investigate the added value of combining density forecasts focused on a specific region of support. We develop forecast combination schemes that assign weights to individual predictive densities based on the censored likelihood scoring rule and the continuous ranked probability scoring rule (CRPS) and compare these to weighting schemes based on the log score and the equally weighted scheme. We apply this approach in the context of measuring downside risk in equity markets using recently developed volatility models, including HEAVY, realized GARCH and GAS models, applied to daily returns on the S&P 500, DJIA, FTSE and Nikkei indexes from 2000 until 2013. The results show that combined density forecasts based on optimizing the censored likelihood scoring rule significantly outperform pooling based on equal weights, optimizing the CRPS or log scoring rule. In addition, 99% Value‐at‐Risk estimates improve when weights are based on the censored likelihood scoring rule.

密度预测组合聚焦评分规则删失似然评分规则下行风险