局部波动的阈值模型:杠杆和均值回归对历史数据影响的证据

A. Lejay, P. Pigato
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引用次数: 15

摘要

在金融市场中,低价格通常与高波动性相关联,反之亦然,这个众所周知的事实通常被称为杠杆效应。我们提出了一个局部波动率模型,由一个具有分段常系数的随机微分方程给出,该模型考虑了价格动态中的杠杆效应和均值回归效应。该模型在动力学中表现出按一定阈值的状态切换。它可以看作是自激阈值自回归(SETAR)模型的连续时间版本。我们提出了一种对波动系数和漂移系数以及阈值水平的估计方法。对纽约证券交易所和标准普尔500指数的351只股票在不同时间窗口的日价格估计的参数显示出一致的杠杆效应的经验证据。均值回归效应也被发现,在危机时期最为明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Threshold Model for Local Volatility: Evidence of Leverage and Mean Reversion Effects on Historical Data
In financial markets, low prices are generally associated with high volatilities and vice-versa, this well-known stylized fact is usually referred to as the leverage effect. We propose a local volatility model, given by a stochastic differential equation with piecewise constant coefficients, which accounts for leverage and mean-reversion effects in the dynamics of the prices. This model exhibits a regime switch in the dynamics according to a certain threshold. It can be seen as a continuous-time version of the self-exciting threshold autoregressive (SETAR) model. We propose an estimation procedure for the volatility and drift coefficients as well as for the threshold level. Parameters estimated on the daily prices of 351 stocks of NYSE and S&P 500, on different time windows, show consistent empirical evidence for leverage effects. Mean-reversion effects are also detected, most markedly in crisis periods.
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