We propose a data-driven way to reduce the noise of covariance matrices of nonstationary systems. In the case of stationary systems, asymptotic approaches were proved to converge to the optimal solutions. Such methods produce eigenvalues that are highly dependent on the inputs, as common sense would suggest. Our approach proposes instead to use a set of eigenvalues totally independent from the inputs and that encode the long-term averaging of the influence of the future on present eigenvalues. Such an influence can be the predominant factor in nonstationary systems. Using real and synthetic data, we show that our data-driven method outperforms optimal methods designed for stationary systems for the filtering of both covariance matrix and its inverse, as illustrated by financial portfolio variance minimization, which makes out method generically relevant to many problems of multivariate inference.
翻译:我们建议采用一种数据驱动方法来减少非静止系统共变基质的噪音,在固定系统的情况下,非现成方法被证明会与最佳解决办法趋同,这些方法产生高度依赖投入的静态值,正如常识所显示的那样。我们的方法提议使用一套完全独立于投入的静态值,并编码未来对当前静态值影响的长期平均值。这种影响可能是非静止系统的主要因素。我们用真实和合成数据表明,我们的数据驱动方法超越了为固定系统设计的过滤常态基质及其反面的最佳方法,如金融组合差异最小化所显示的,它使方法与多种变异推论的许多问题具有一般相关性。</s>