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Large-dimensional factor modeling based on high-frequency observations

机译:基于高频观测的大维因素建模

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This paper develops a statistical theory to estimate an unknown factor structure based on financial high-frequency data. We derive an estimator for the number of factors and consistent and asymptotically mixed-normal estimators of the loadings and factors under the assumption of a large number of cross-sectional and high-frequency observations. The estimation approach can separate factors for continuous and rare jump risk. The estimators for the loadings and factors are based on the principal component analysis of the quadratic covariation matrix. The estimator for the number of factors uses a perturbed eigenvalue ratio statistic. In an empirical analysis of the S&P 500 firms we estimate four stable continuous systematic factors, which can be approximated very well by a market and industry portfolios. Jump factors are different from the continuous factors. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文发展了统计理论,以估算基于财务高频数据的未知因子结构。 我们衍生估算器的因素的数量和负载和渐近和渐近的混合正常估计和因素在大量横截面和高频观测的假设下。 估算方法可以分离连续和罕见的跳跃风险的因素。 负载和因子的估计基于二次协变矩阵的主要成分分析。 因素数量的估算器使用扰动的特征值统计量。 在对标准普尔500亿公司的实证分析中,我们估计了四种稳定的连续系统因素,可以通过市场和行业组合来近似。 跳跃因子与连续因素不同。 (c)2018 Elsevier B.v.保留所有权利。

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