The Merit of High-Frequency Data in Portfolio Allocation

N. Hautsch, Lada M. Kyj, P. Malec
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引用次数: 34

Abstract

This paper addresses the open debate about the usefulness of high-frequency (HF) data in large-scale portfolio allocation. Daily covariances are estimated based on HF data of the S&P 500 universe employing a blocked realized kernel estimator. We propose forecasting covariance matrices using a multi-scale spectral decomposition where volatilities, correlation eigenvalues and eigenvectors evolve on different frequencies. In an extensive out-of-sample forecasting study, we show that the proposed approach yields less risky and more diversified portfolio allocations as prevailing methods employing daily data. These performance gains hold over longer horizons than previous studies have shown.
高频数据在投资组合配置中的价值
本文讨论了关于高频数据在大规模投资组合配置中的有用性的公开辩论。每日协方差的估计是基于高频数据的标准普尔500宇宙采用阻塞实现核估计。我们提出使用多尺度谱分解预测协方差矩阵,其中波动性、相关特征值和特征向量在不同频率上演化。在一项广泛的样本外预测研究中,我们表明,与采用日常数据的流行方法相比,所提出的方法产生的风险更小,投资组合配置更多样化。与之前的研究结果相比,这些绩效提升的持续时间更长。
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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