A nonparametric test for diurnal variation in spot correlation processes

Kim Christensen, Ulrich Hounyo, Zhi Liu
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Abstract

The association between log-price increments of exchange-traded equities, as measured by their spot correlation estimated from high-frequency data, exhibits a pronounced upward-sloping and almost piecewise linear relationship at the intraday horizon. There is notably lower-on average less positive-correlation in the morning than in the afternoon. We develop a nonparametric testing procedure to detect such deterministic variation in a correlation process. The test statistic has a known distribution under the null hypothesis, whereas it diverges under the alternative. It is robust against stochastic correlation. We run a Monte Carlo simulation to discover the finite sample properties of the test statistic, which are close to the large sample predictions, even for small sample sizes and realistic levels of diurnal variation. In an application, we implement the test on a monthly basis for a high-frequency dataset covering the stock market over an extended period. The test leads to rejection of the null most of the time. This suggests diurnal variation in the correlation process is a nontrivial effect in practice.
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定点相关过程日变化的非参数检验
根据高频数据估算的现货相关性衡量的交易所交易股票对数价格增量之间的关联,在当日范围内呈现出明显的向上倾斜和几乎成片的线性关系。与下午相比,上午的正相关性明显较低,平均较低。我们开发了一种非参数检验程序来检测相关过程中的这种确定性变化。在零假设下,检验统计量的分布是已知的,而在备择假设下,检验统计量的分布是偏离的。它对随机相关性具有稳健性。我们通过蒙特卡罗模拟发现了测试统计量的有限样本特性,即使在样本量较小和昼夜变化水平较高的情况下,测试统计量也接近于大样本预测值。在应用中,我们按月对覆盖股市较长时间的高频数据集进行了检验。该检验在大多数情况下都拒绝接受 null。这表明相关过程中的昼夜变化在实践中具有非同小可的影响。
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