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Large volatility matrix inference via combining low-frequency and high-frequency approaches

机译:结合低频和高频方法进行大波动矩阵推断

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摘要

It is increasingly important in financial economics to estimate volatilities of asset returns. However, most of the available methods are not directly applicable when the number of assets involved is large, due to the lack of accuracy in estimating high-dimensional matrices. Therefore it is pertinent to reduce the effective size of volatility matrices in order to produce adequate estimates and forecasts. Furthermore, since high-frequency financial data for different assets are typically not recorded at the same time points, conventional dimension-reduction techniques are not directly applicable. To overcome those difficulties we explore a novel approach that combines high-frequency volatility matrix estimation together with low-frequency dynamic models. The proposed methodology consists of three steps: (i) estimate daily realized covolatility matrices directly based on high-frequency data, (ii) fit a matrix factor model to the estimated daily covolatility matrices, and (iii) fit a vector autoregressive model to the estimated volatility factors.We establish the asymptotic theory for the proposed methodology in the framework that allows sample size, number of assets, and number of days go to infinity together. Our theory shows that the relevant eigenvalues and eigenvectors can be consistently estimated. We illustrate the methodology with the high-frequency price data on several hundreds of stocks traded in Shenzhen and Shanghai Stock Exchanges over a period of 177 days in 2003. Our approach pools together the strengths of modeling and estimation at both intra-daily (high-frequency) and inter-daily (low-frequency) levels.
机译:在金融经济学中,估计资产收益的波动率越来越重要。但是,由于涉及的高资产矩阵估计准确性不足,因此当涉及的资产数量很大时,大多数可用方法不能直接应用。因此,有必要减小波动率矩阵的有效大小,以便产生足够的估计和预测。此外,由于通常不会在同一时间点记录不同资产的高频财务数据,因此传统的降维技术无法直接应用。为了克服这些困难,我们探索了一种将高频波动矩阵估计与低频动态模型结合在一起的新颖方法。拟议的方法包括三个步骤:(i)直接基于高频数据估算每日实现的波动率矩阵;(ii)将矩阵因子模型拟合至估算的每日波动率矩阵;(iii)将矢量自回归模型拟合至我们在框架中建立了拟议方法的渐进理论,该模型允许样本数量,资产数量和天数一起达到无穷大。我们的理论表明,相关的特征值和特征向量可以被一致地估计。我们通过2003年177天的时间在深圳和上海证券交易所交易的几百只股票的高频价格数据来说明该方法。我们的方法将日内(高频率和每日(低频)水平。

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