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首页> 外文期刊>Journal of the American statistical association >Multi-Scale Jump and Volatility Analysis for High-Frequency Financial Data
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Multi-Scale Jump and Volatility Analysis for High-Frequency Financial Data

机译:高频财务数据的多尺度跳跃和波动性分析

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摘要

The wide availability of high-frequency data for many financial instruments stimulates an upsurge interest in statistical research on the estimation of volatility. Jump-diffusion processes observed with market microstructure noise are frequently used to model high-frequency financial data. Yet existing methods are developed for either noisy data from a continuous-diffusion price model or data from a jump-diffusion price model without noise. We propose methods to cope with both jumps in the price and market microstructure noise in the observed data. These methods allow us to estimate both integrated volatility and jump variation from the data sampled from jump-diffusion price processes, contaminated with the market microstructure noise. Our approach is to first remove jumps from the data and then apply noise-resistant methods to estimate the integrated volatility. The asymptotic analysis and the simulation study reveal that the proposed wavelet methods can successfully remove the jumps in the price processes and the integrated volatility can be estimated as accurately as in the case with no presence of jumps in the price processes. In addition, they have outstanding statistical efficiency. The methods are illustrated by applications to two high-frequency exchange rate data sets.
机译:许多金融工具提供的高频数据的广泛使用激发了人们对波动率估计的统计研究的浓厚兴趣。市场微观结构噪声所观察到的跳跃扩散过程通常用于对高频金融数据进行建模。然而,已经开发了用于来自连续扩散价格模型的噪声数据或来自无噪声的跳跃扩散价格模型的数据的现有方法。在观察到的数据中,我们提出了应对价格上涨和市场微观结构噪声上涨的方法。这些方法使我们能够从跳跃扩散价格过程中采样的数据(受市场微观结构噪声污染)来估计综合波动率和跳跃变化。我们的方法是首先从数据中消除跳跃,然后应用抗噪声的方法来估计综合波动率。渐近分析和仿真研究表明,所提出的小波方法可以成功地消除价格过程中的跳跃,并且与价格过程中不存在跳跃的情况一样,可以准确估计综合波动率。此外,它们具有出色的统计效率。通过应用到两个高频交换速率数据集来说明这些方法。

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