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首页> 外文期刊>Journal of the American statistical association >The Five Trolls Under the Bridge: Principal Component Analysis With Asynchronous and Noisy High Frequency Data
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The Five Trolls Under the Bridge: Principal Component Analysis With Asynchronous and Noisy High Frequency Data

机译:桥下的五个巨魔:主要成分分析,具有异步和嘈杂的高频数据

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摘要

We develop a principal component analysis (PCA) for high frequency data. As in Northern fairy tales, there are trolls waiting for the explorer. The first three trolls are market microstructure noise, asynchronous sampling times, and edge effects in estimators. To get around these, a robust estimator of the spot covariance matrix is developed based on the smoothed two-scale realized variance (S-TSRV). The fourth troll is how to pass from estimated time-varying covariance matrix to PCA. Under finite dimensionality, we develop this methodology through the estimation of realized spectral functions. Rates of convergence and central limit theory, as well as an estimator of standard error, are established. The fifth troll is high dimension on top of high frequency, where we also develop PCA. With the help of a new identity concerning the spot principal orthogonal complement, the high-dimensional rates of convergence have been studied after eliminating several strong assumptions in classical PCA. As an application, we show that our first principal component (PC) closely matches but potentially outperforms the S&P 100 market index. From a statistical standpoint, the close match between the first PC and the market index also corroborates this PCA procedure and the underlying S-TSRV matrix, in the sense of Karl Popper.for this article are available online.
机译:我们为高频数据开发了一个主成分分析(PCA)。与北方童话故事一样,有巨魔等待探险家。前三个巨魔是市场上结构噪声,异步采样时间和估算中的边缘效应。为了解决这些,基于平滑的双尺度实现方差(S-TSRV)开发了一系列强大的专递矩阵的稳健估计器。第四个巨魔是如何通过估计的时变协方差矩阵到PCA。在有限的维度下,我们通过估计实现的光谱函数来开发该方法。建立了收敛率和中央限制理论,以及标准误差的估计。第五次巨魔在高频上的高度高,我们还开发了PCA。在有关现场主正交补充的新标识的帮助下,在消除了经典PCA中的几个强烈假设之后,已经研究了高尺寸的收敛速率。作为申请,我们表明我们的第一个主要成分(PC)紧密匹配但潜在的价格优于标准普尔100个市场指数。从统计的角度来看,第一台PC与市场指数之间的密切匹配也在Karl Popper的意义上证实了这款PCA程序和底层S-TSRV矩阵。本文可在线获取。

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