论文标题

量化弹性和在强相关噪声下发生政权变化的风险

Quantifying resilience and the risk of regime shifts under strong correlated noise

论文作者

Heßler, Martin, Kamps, Oliver

论文摘要

预警指标通常会遭受现实时间序列的短暂和粗糙度。此外,在实际应用中,通常强大而相关的噪声贡献是统计措施的严重缺点。即使在有利的模拟条件下,由于其定性性质,有时甚至含糊的趋势比率,措施的容量也有限。为了解决这些缺点,我们通过langevin方程的确定性项的斜率分析了系统的稳定性,该方程的确定性项是靠近固定点的系统动力学的基础。开源方法可应用于在现实世界数据中通常观察到的噪声水平和相关场景下的先前研究的季节性生态模型。我们通过与线性和恒定模型的贝叶斯模型比较,将结果与自相关,标准偏差,偏度和峰度作为主要指标候选。我们表明,由于其定量性质和对噪声水平和类型的高度鲁棒性,确定性项的斜率是一种有希望的选择。与先前执行的研究相比,发现标准偏差表现最佳的研究相比,通常计算出的指标以外的自相关以及对系统稳定性的可靠见解。此外,在我们确定每个时间窗口的最小数据量之前,我们讨论了数据的季节性性质对各种指标的稳健计算的重大影响,从而导致漂移斜率估计的显着趋势。

Early warning indicators often suffer from the shortness and coarse-graining of real-world time series. Furthermore, the typically strong and correlated noise contributions in real applications are severe drawbacks for statistical measures. Even under favourable simulation conditions the measures are of limited capacity due to their qualitative nature and sometimes ambiguous trend-to-noise ratio. In order to solve these shortcomings, we analyse the stability of the system via the slope of the deterministic term of a Langevin equation, which is hypothesized to underlie the system dynamics close to the fixed point. The open-source available method is applied to a previously studied seasonal ecological model under noise levels and correlation scenarios commonly observed in real world data. We compare the results to autocorrelation, standard deviation, skewness and kurtosis as leading indicator candidates by a Bayesian model comparison with a linear and a constant model. We show that the slope of the deterministic term is a promising alternative due to its quantitative nature and high robustness against noise levels and types. The commonly computed indicators apart from the autocorrelation with deseasonalization fail to provide reliable insights into the stability of the system in contrast to a previously performed study in which the standard deviation was found to perform best. In addition, we discuss the significant influence of the seasonal nature of the data to the robust computation of the various indicators, before we determine approximately the minimal amount of data per time window that leads to significant trends for the drift slope estimations.

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