On a multi-timescale statistical feedback model for volatility fluctuations

L. Borland, J. Bouchaud
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引用次数: 61

Abstract

We study, both analytically and numerically, an ARCH-like, multiscale model of volatility, which assumes that the volatility is governed by the observed past price changes on different time scales. With a power-law distribution of time horizons, we obtain a model that captures most stylized facts of financial time series: Student-like distribution of returns with a power-law tail, long-memory of the volatility, slow convergence of the distribution of returns towards the Gaussian distribution, multifractality and anomalous volatility relaxation after shocks. At variance with recent multifractal models that are strictly time reversal invariant, the model also reproduces the time assymmetry of financial time series: past large scale volatility influence future small scale volatility. In order to quantitatively reproduce all empirical observations, the parameters must be chosen such that our model is close to an instability, meaning that (a) the feedback effect is important and substantially increases the volatility, and (b) that the model is intrinsically difficult to calibrate because of the very long range nature of the correlations. By imposing the consistency of the model predictions with a large set of different empirical observations, a reasonable range of the parameters value can be determined. The model can easily be generalized to account for jumps, skewness and multiasset correlations.
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波动性波动的多时间尺度统计反馈模型
我们研究了一个类似arch的多尺度波动性模型,该模型假设波动性受不同时间尺度上观察到的过去价格变化的支配。通过时间范围的幂律分布,我们获得了一个模型,该模型捕获了金融时间序列的大多数风格化事实:具有幂律尾部的学生式收益分布,波动性的长记忆,收益分布向高斯分布的缓慢收敛,多重分形和冲击后的异常波动性松弛。与最近严格的时间反转不变量多重分形模型不同,该模型还再现了金融时间序列的时间非对称性:过去的大规模波动影响未来的小规模波动。为了定量地再现所有的经验观察,必须选择参数,使我们的模型接近不稳定性,这意味着(a)反馈效应很重要,并且大大增加了波动性,(b)由于相关性的非常长的范围性质,该模型本质上难以校准。通过将模型预测与大量不同的经验观测结果相一致,可以确定一个合理的参数值范围。该模型可以很容易地推广到考虑跳跃、偏度和多资产相关性。
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