Latent Common Return Volatility Factors: Capturing Elusive Predictive Accuracy Gains When Forecasting Volatility

Ming-Yen Cheng, Norman R. Swanson, Xiye Yang
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引用次数: 1

Abstract

In this paper, we use factor-augmented HAR-type models to predict the daily integrated volatility of asset returns. Our approach is based on a proposed two-step dimension reduction procedure designed to extract latent common volatility factors from a large dimensional and high-frequency returns dataset with 267 constituents of the S&P 500 index. In the first step, we apply either LASSO or elastic net shrinkage on estimates of integrated volatility of all constituents in the dataset, in order to select a subset of asset return series for further processing. In the second step, we utilize (sparse) principal component analysis to estimate latent common asset return factors, from which latent integrated volatility factors are extracted. Although we find limited in-sample fit improvement, relative to a benchmark HAR model, all of our proposed factor-augmented models result in substantial out-of-sample predictive accuracy improvement. In particular, forecasting gains are observed at market, sector, and individual-stock levels, with the exception of the financial sector. Further investigation of the factor structures for non-financial assets shows that industrial and technology stocks are characterized by minimal exposure to financial assets, inasmuch as forecasting gains associated with factor-augmented models for these types of assets are largely attributable to the inclusion of non-financial stock price return volatility in our latent factors.
潜在的共同回报波动因素:在预测波动时捕捉难以捉摸的预测准确性增益
本文采用因子增强的har模型来预测资产收益的日综合波动率。我们的方法基于提议的两步降维程序,该程序旨在从包含标准普尔500指数267个成分股的大维度高频回报数据集中提取潜在的共同波动因素。在第一步中,我们对数据集中所有成分的综合波动率估计应用LASSO或弹性净收缩,以便选择资产回报序列的子集进行进一步处理。第二步,我们利用(稀疏)主成分分析来估计潜在的共同资产收益因子,从中提取潜在的综合波动因子。尽管相对于基准HAR模型,我们发现样本内拟合改善有限,但我们提出的所有因子增强模型都能显著提高样本外预测精度。特别是,预测收益在市场、行业和个股水平上被观察到,金融部门除外。对非金融资产的因素结构的进一步研究表明,工业和科技股的特点是对金融资产的敞口最小,因为与这些类型的资产的因素增强模型相关的预测收益在很大程度上归因于将非金融股票价格回报波动纳入我们的潜在因素。
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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