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Quantifying Drivers of Forecasted Returns Using Approximate Dynamic Factor Models for Mixed-Frequency Panel Data

机译:使用近似动态因子模型来定量预测返回的驱动程序,用于混合频率面板数据

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This article considers the estimation of Approximate Dynamic Factor Models with homoscedastic, cross-sectionally correlated errors for incomplete panel data. In contrast to existing estimation approaches, the presented estimation method comprises two expectation-maximization algorithms and uses conditional factor moments in closed form. To determine the unknown factor dimension and autoregressive order, we propose a two-step information-based model selection criterion. The performance of our estimation procedure and the model selection criterion is investigated within a Monte Carlo study. Finally, we apply the Approximate Dynamic Factor Model to real-economy vintage data to support investment decisions and risk management. For this purpose, an autoregressive model with the estimated factor span of the mixed-frequency data as exogenous variables maps the behavior of weekly S&P500 log-returns. We detect the main drivers of the index development and define two dynamic trading strategies resulting from prediction intervals for the subsequent returns.
机译:本文考虑了具有同性恋的近似动态因子模型的估计,对于不完整的面板数据,横截面相关误差。与现有估计方法相反,所呈现的估计方法包括两个期望最大化算法,并使用封闭形式的条件因子矩。要确定未知因子维度和自回归顺序,我们提出了一种基于两步的信息的模型选择标准。在蒙特卡罗研究中调查了我们的估算程序和模型选择标准的表现。最后,我们将近似动态因子模型应用于实体经济复古数据,以支持投资决策和风险管理。为此目的,具有混合频率数据的估计因子跨度作为外源变量的自回归模型映射了每周S&P500日志返回的行为。我们检测到索引开发的主要驱动程序,并定义由后续返回的预测间隔产生的两个动态交易策略。

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