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Realized dual-betas for leading Australian stocks: An evaluation of the estimation methods and the effect of the sampling interval

机译:已实现澳大利亚领先股票的双重beta:评估方法的评估和抽样间隔的影响

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摘要

We present a novel empirical approach based on categorizing systematic risk, the beta of a stock, for evaluating the performance of two recently reported interval estimation methods, the asymptotic and the wild bootstrap, suitable for estimation from high-frequency data. In a dual-beta context, the robustness of the estimation methods is assessed using three different lengths of the sampling interval that fall within the range deemed reasonable for achieving a balance between bias and precision of estimates derived from intra-day data. We apply 'clustering of variables' to categorized betas to assess similarity of market risk experienced by various stocks in up and down market conditions when such risk is estimated using different methods and data sampled at differing sampling intervals. Our study suggests that regardless of the length of the sampling interval, the estimation procedure and market conditions are the major influencing factors. The effect of the length of the sampling interval in producing dissimilar estimates is more in up market conditions compared with down market conditions for both estimation methods. The study also suggests that categorization based on the wild bootstrap method provides more robust results than the asymptotic results, to the choice of different intra-day sampling intervals.
机译:我们提出了一种基于系统风险分类的新颖经验方法,即股票的beta,用于评估两种最近报告的区间估计方法(渐近法和野地自举法)的性能,适用于根据高频数据进行估计。在双beta环境中,使用三种不同的采样间隔长度评估估算方法的鲁棒性,这些长度在为实现偏差和从日内数据得出的估算精度之间取得平衡而认为合理的范围内。当使用不同的方法和以不同的采样间隔采样的数据来估计风险时,我们将“变量聚类”(clustering)应用于分类的beta,以评估各种股票在上下市场条件下所经历的市场风险的相似性。我们的研究表明,不管抽样间隔的长短,估计程序和市场条件都是主要的影响因素。与两种市场估计方法的下跌市场条件相比,在上涨市场条件下抽样间隔长度的影响在产生不相似估计中的影响更大。研究还表明,基于野生自举法的分类在选择不同的日内采样间隔方面比渐进结果更可靠。

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