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首页> 外文期刊>Open Journal of Statistics >Forecasting Realized Volatility Using Subsample Averaging
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Forecasting Realized Volatility Using Subsample Averaging

机译:使用子样本平均预测已实现的波动率

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When the observed price process is the true underlying price process plus microstructure noise, it is known that realized volatility (RV) estimates will be overwhelmed by the noise when the sampling frequency approaches infinity. Therefore, it may be optimal to sample less frequently, and averaging the less frequently sampled subsamples can improve estimation for quadratic variation. In this paper, we extend this idea to forecasting daily realized volatility. While subsample averaging has been proposed and used in estimating RV, this paper is the first that uses subsample averaging for forecasting RV. The subsample averaging method we examine incorporates the high frequency data in different levels of systematic sampling. It first pools the high frequency data into several subsamples, then generates forecasts from each subsample, and then combines these forecasts. We find that in daily S&P 500 return realized volatility forecasts, subsample averaging generates better forecasts than those using only one subsample.
机译:当观察到的价格过程是真正的基础价格过程加上微观结构噪声时,众所周知,当采样频率接近无穷大时,实际波动率(RV)估计将被噪声淹没。因此,最佳的做法是减少采样频率,对采样频率较低的子样本取平均可以改善二次方差的估计。在本文中,我们将此思想扩展到预测每日实现的波动率。虽然提出了子样本平均并将其用于RV估计,但本文还是第一篇使用子样本平均来预测RV的论文。我们研究的子样本平均方法将高频数据合并到不同级别的系统抽样中。它首先将高频数据汇总到几个子样本中,然后根据每个子样本生成预测,然后将这些预测合并。我们发现,在标准普尔500指数每日回报实现的波动率预测中,子样本平均生成的预测要好于仅使用一个子样本的预测。

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