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Structured volatility matrix estimation for non-synchronized high-frequency financial data

机译:非同步高频财务数据的结构化波动矩阵估计

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Several large volatility matrix estimation procedures have been recently developed for factor-based Ito processes whose integrated volatility matrix consists of low-rank and sparse matrices. Their performance depends on the accuracy of input volatility matrix estimators. When estimating co-volatilities based on high-frequency data, one of the crucial challenges is non-synchronization for illiquid assets, which makes their co-volatility estimators inaccurate. In this paper, we study how to estimate the large integrated volatility matrix without using co-volatilities of illiquid assets. Specifically, we pretend that the co-volatilities for illiquid assets are missing, and estimate the low-rank matrix using a matrix completion scheme with a structured missing pattern. To further regularize the sparse volatility matrix, we employ the principal orthogonal complement thresholding method (POET). We also investigate the asymptotic properties of the proposed estimation procedure and demonstrate its advantages over using co-volatilities of illiquid assets. The advantages of our methods are also verified by an extensive simulation study and illustrated by high-frequency data for NYSE stocks. (C) 2018 Elsevier B.V. All rights reserved.
机译:最近已经开发了几种大型波动矩阵估计程序,用于基于因子的ITO进程,其集成波动矩阵由低级和稀疏矩阵组成。它们的性能取决于输入波动率矩阵估计器的准确性。当基于高频数据估计共同频率的协同波动性时,一个至关重要的挑战是不同步的非正证资产,这使得它们的共波动估计值不准确。在本文中,我们研究了如何估计大集成挥发性矩阵而不使用非水分资产的共同挥发性。具体来说,我们假装使用具有结构缺失模式的矩阵完成方案来缺少非替代品资产的共和矩阵。为了进一步规范稀疏波动率矩阵,我们采用主正交的补码阈值(POET)。我们还研究了所提出的估计程序的渐近性质,并展示了对利用非水资源资产的共同挥发性的优势。我们的方法的优点也是通过广泛的仿真研究验证,并通过用于纽约证券交易所股票的高频数据说明。 (c)2018 Elsevier B.v.保留所有权利。

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