Consistent High-Precision Volatility from High-Frequency Data

Fulvio Corsi, G. Zumbach, Ulrich A. Müller, M. Dacorogna
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引用次数: 152

Abstract

type="main" xml:lang="en"> Estimates of daily volatility are investigated. Realized volatility can be computed from returns observed over time intervals of different sizes. For simple statistical reasons, volatility estimators based on high-frequency returns have been proposed, but such estimators are found to be strongly biased as compared to volatilities of daily returns. This bias originates from microstructure effects in the price formation. For foreign exchange, the relevant microstructure effect is the incoherent price formation, which leads to a strong negative first-order autocorrelation ρ(1)≃40 per cent for tick-by-tick returns and to the volatility bias. On the basis of a simple theoretical model for foreign exchange data, the incoherent term can be filtered away from the tick-by-tick price series. With filtered prices, the daily volatility can be estimated using the information contained in high-frequency data, providing a high-precision measure of volatility at any time interval. (J.E.L.: C13, C22, C81).
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从高频数据中获得一致的高精度波动性
type="main" xml:lang="en">对每日波动率的估计进行了研究。已实现的波动率可以通过在不同大小的时间间隔内观察到的回报来计算。由于简单的统计原因,已经提出了基于高频收益的波动率估计器,但与每日收益的波动率相比,这种估计器被发现有强烈的偏差。这种偏差源于价格形成过程中的微观结构效应。对于外汇,相关的微观结构效应是不连贯的价格形成,这导致一阶负自相关ρ(1)随时间变化的回报达到40%,并导致波动性偏差。在外汇数据的一个简单的理论模型的基础上,不连贯的项可以从逐点价格序列中过滤掉。通过过滤价格,可以使用高频数据中包含的信息来估计每日波动率,从而在任何时间间隔内提供高精度的波动率测量。(j.e.l.: c13, c22, c81)。
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