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Interplay between past market correlation structure changes and future volatility outbursts

机译:过去市场相关结构之间的相互作用变化和未来波动爆发

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We report significant relations between past changes in the market correlation structure and future changes in the market volatility. This relation is made evident by using a measure of "correlation structure persistence" on correlation-based information filtering networks that quantifies the rate of change of the market dependence structure. We also measured changes in the correlation structure by means of a "metacorrelation" that measures a lagged correlation between correlation matrices computed over different time windows. Both methods show a deep interplay between past changes in correlation structure and future changes in volatility and we demonstrate they can anticipate market risk variations and this can be used to better forecast portfolio risk. Notably, these methods overcome the curse of dimensionality that limits the applicability of traditional econometric tools to portfolios made of a large number of assets. We report on forecasting performances and statistical significance of both methods for two different equity datasets. We also identify an optimal region of parameters in terms of True Positive and False Positive trade-off, through a ROC curve analysis. We find that this forecasting method is robust and it outperforms logistic regression predictors based on past volatility only. Moreover the temporal analysis indicates that methods based on correlation structural persistence are able to adapt to abrupt changes in the market, such as financial crises, more rapidly than methods based on past volatility.
机译:我们报告了过去变化之间的大量关系,市场相关结构和市场波动的未来变化。通过在基于相关的信息过滤网络上使用“相关结构持久性”的量度来说,这一关系是显而易见的,这些信息过滤网络量化了市场依赖结构的变化率。我们还通过“MetArcorrelation”测量相关性的相关结构的变化,该“正常性”测量在不同时间窗口之间计算的相关矩阵之间的滞后相关性。这两种方法都显示出过去的相关结构和未来变化变化之间的深度相互作用,并且我们证明他们可以预测市场风险变化,这可以用于更好地预测投资组合风险。值得注意的是,这些方法克服了一系列维度的诅咒,限制了传统的经济学工具对由大量资产制成的投资组合的适用性。我们报告了两种不同股权数据集两种方法的性能和统计学意义。我们还通过ROC曲线分析在真正的正面和误报折衷方面确定了最佳参数区域。我们发现该预测方法是强大的,并且基于过去的波动率,它优于Logistic回归预测器。此外,时间分析表明,基于相关结构持久性的方法能够适应市场的突然变化,例如金融危机,比基于过去波动的方法更快。

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