预测长期因素波动

SSRN Pub Date : 2022-10-20 DOI:10.2139/ssrn.4092032
T. O. K. Zeissler
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引用次数: 1

摘要

本文在广泛的样本内和样本外框架下研究了快速增长的多空因素策略领域的长期波动预测。作者在前人的基础上,通过对各种预测配置进行实证比较,为学术界和实践者提供如何针对各种既定因素形成对未来波动率的准确预测的指导。该数据集涵盖了21个因素回报时间序列,涵盖了多个资产类别、因素风格和较长的历史数据周期。样本内和样本外的结果都表明,在更长的历史回顾期、更长的预测窗口和更复杂的模型(考虑短期波动聚类和由资产定价文献驱动的外部预测因子)下,预测准确性单调增加,而在实时环境下的结果似乎不如样本内观察到的那么明显。此外,参与套利式因素策略和多因素投资组合(而不是单因素)的投资者平均而言获得了更可靠的预测,正如样本外分析所证实的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Long-Horizon Factor Volatility
This article investigates forecasts of long-term volatility for the fast-growing field of long–short factor strategies in an extensive in-sample and out-of-sample framework. The author follows previous work by empirically comparing various forecast configurations to provide guidance for academics and practitioners on how to form accurate predictions of future volatility for various established factors. The set spans 21 factor return time series over multiple asset classes, factor styles, and a long historical data period. Both in-sample and out-of-sample results suggest monotonically increasing forecast accuracy for longer historical lookback periods, longer forecasting windows, and more-sophisticated models (considering short-term volatility clustering and external predictors motivated by the asset-pricing literature), while the findings appear less pronounced in a real-time setting than observed in-sample. Moreover, investors engaging in carry-styled factor strategies and multifactor portfolios (rather than single factors) achieve more-reliable forecasts, on average, as confirmed by the out-of-sample analysis.
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