Portfolio management using realized covariances: Evidence from Brazil

João F. Caldeira , Guilherme V. Moura , Marcelo S. Perlin , André A.P. Santos
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引用次数: 10

Abstract

It is often argued that intraday returns can be used to construct covariance estimates that are more accurate than those based on daily returns. However, it is still unclear whether high frequency data provide more precise covariance estimates in markets more contaminated from microstructure noise such as higher bid-ask spreads and lower liquidity. We address this question by investigating the benefits of using high frequency data in the Brazilian equities market to construct optimal minimum variance portfolios. We implement alternative realized covariance estimators based on intraday returns sampled at alternative frequencies and obtain their dynamic versions using a multivariate GARCH framework. Our evidence based on a high-dimensional data set suggests that realized covariance estimators performed significantly better from an economic point of view in comparison to standard estimators based on low-frequency (close-to-close) data as they delivered less risky portfolios.

使用已实现协方差的投资组合管理:来自巴西的证据
人们经常认为,日内收益可以用来构建协方差估计,这比基于日收益的协方差估计更准确。然而,高频数据是否在受微观结构噪音(如更高的买卖价差和更低的流动性)影响更大的市场中提供更精确的协方差估计仍不清楚。我们通过研究在巴西股票市场中使用高频数据构建最优最小方差投资组合的好处来解决这个问题。我们基于在不同频率采样的日内回报实现了不同的协方差估计,并使用多元GARCH框架获得了它们的动态版本。我们基于高维数据集的证据表明,从经济角度来看,与基于低频(近距离)数据的标准估计器相比,实现的协方差估计器表现得更好,因为它们提供的投资组合风险更低。
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CiteScore
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