Predictive Regressions Under Asymmetric Loss: Factor Augmentation and Model Selection

M. Demetrescu, Sinem Hacioglu Hoke
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引用次数: 4

Abstract

This paper discusses the specifics of forecasting using factor-augmented predictive regressions under general loss functions. In line with the literature, we employ principal component analysis to extract factors from the set of predictors. In addition, we also extract information on the volatility of the series to be predicted, since the volatility is forecast-relevant under non-quadratic loss functions. We ensure asymptotic unbiasedness of the forecasts under the relevant loss by estimating the predictive regression through the minimization of the in-sample average loss. Finally, we select the most promising predictors for the series to be forecast by employing an information criterion that is tailored to the relevant loss. Using a large monthly data set for the US economy, we assess the proposed adjustments in a pseudo out-of-sample forecasting exercise for various variables. As expected, the use of estimation under the relevant loss is found to be effective. Using an additional volatility proxy as the predictor and conducting model selection that is tailored to the relevant loss function enhances the forecast performance significantly.
非对称损失下的预测回归:因子增强与模型选择
本文讨论了在一般损失函数下使用因子增强预测回归进行预测的具体问题。与文献一致,我们采用主成分分析从预测集合中提取因子。此外,我们还提取了待预测序列的波动率信息,因为波动率在非二次损失函数下与预测相关。我们通过最小化样本内平均损失来估计预测回归,从而确保在相关损失下预测的渐近无偏性。最后,我们通过采用针对相关损失量身定制的信息准则,为要预测的序列选择最有希望的预测因子。使用美国经济的大型月度数据集,我们在各种变量的伪样本外预测练习中评估拟议的调整。正如预期的那样,在相关损失下使用估计是有效的。使用额外的波动率代理作为预测器,并根据相关损失函数进行模型选择,显著提高了预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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