Faes Luca, Porta Alberto, Nollo Giandomenico
Department of Physics, University of Trento, Trento, Italy.
Phys Rev E Stat Nonlin Soft Matter Phys. 2008 Aug;78(2 Pt 2):026201. doi: 10.1103/PhysRevE.78.026201. Epub 2008 Aug 1.
We compare the different existing strategies of mutual nonlinear prediction regarding their ability to assess the coupling strength and directionality of the interactions in bivariate time series. Under the common framework of k -nearest neighbor local linear prediction, we test three approaches based on cross prediction, mixed prediction, and predictability improvement. The measures of interdependence provided by these approaches are first evaluated on short realizations of bivariate time series generated by coupled Henon models, investigating also the effects of noise. The usefulness of the three mutual nonlinear prediction schemes is then assessed in a common physiological application during known conditions of interaction-i.e., the analysis of the interdependence between heart rate and arterial pressure variability in healthy humans during supine resting and passive head-up tilting. Based on both simulation results and physiological interpretability of cardiovascular results, we conclude that cross prediction is valuable to quantify the coupling strength and predictability improvement to elicit directionality of the interactions in short and noisy bivariate time series.
我们比较了现有的不同相互非线性预测策略,评估它们在双变量时间序列中评估相互作用的耦合强度和方向性的能力。在k近邻局部线性预测的通用框架下,我们测试了基于交叉预测、混合预测和可预测性改进的三种方法。这些方法提供的相互依赖度量首先在由耦合的亨农模型生成的双变量时间序列的短实现上进行评估,同时也研究噪声的影响。然后,在已知相互作用条件的常见生理应用中——即健康人在仰卧休息和被动头高位倾斜期间心率与动脉压变异性之间的相互依赖分析——评估这三种相互非线性预测方案的实用性。基于模拟结果和心血管结果的生理学可解释性,我们得出结论,交叉预测对于量化耦合强度很有价值,而可预测性改进对于在短且有噪声的双变量时间序列中引出相互作用的方向性很有价值。