大型非平稳噪声协方差矩阵:一种交叉验证方法

Vincent W. C. Tan, S. Zohren
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引用次数: 3

摘要

我们引入了一种新的协方差估计器,利用指数加权移动平均和通过交叉验证缩小样本内特征值来利用金融时间序列的异方差性质。我们的估计器是模型不可知的,因为我们不假设矩阵的随机条目的分布或协方差矩阵的结构。此外,我们还展示了随机矩阵理论如何为描述估计器动态时间尺度的超参数的自动调谐提供指导。通过衰减来自横截面和时间序列维度的噪声,我们经验地证明了我们的估计器比基于指数加权和均匀加权协方差矩阵的竞争估计器的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Non-Stationary Noisy Covariance Matrices: A Cross-Validation Approach
We introduce a novel covariance estimator that exploits the heteroscedastic nature of financial time series by employing exponential weighted moving averages and shrinking the in-sample eigenvalues through cross-validation. Our estimator is model-agnostic in that we make no assumptions on the distribution of the random entries of the matrix or structure of the covariance matrix. Additionally, we show how Random Matrix Theory can provide guidance for automatic tuning of the hyperparameter which characterizes the time scale for the dynamics of the estimator. By attenuating the noise from both the cross-sectional and time-series dimensions, we empirically demonstrate the superiority of our estimator over competing estimators that are based on exponentially-weighted and uniformly-weighted covariance matrices.
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