Physicists are starting to work in areas where noisy signal analysis is required. In these fields, such as Economics, Neuroscience, and Physics, the notion of causality should be interpreted as a statistical measure. We introduce to the lay reader the Granger causality between two time series and illustrate ways of calculating it: a signal $X$ ``Granger-causes'' a signal $Y$ if the observation of the past of $X$ increases the predictability of the future of $Y$ when compared to the same prediction done with the past of $Y$ alone. In other words, for Granger causality between two quantities it suffices that information extracted from the past of one of them improves the forecast of the future of the other, even in the absence of any physical mechanism of interaction. We present derivations of the Granger causality measure in the time and frequency domains and give numerical examples using a non-parametric estimation method in the frequency domain. Parametric methods are addressed in the Appendix. We discuss the limitations and applications of this method and other alternatives to measure causality.
翻译:物理学家开始在需要对信号进行噪音分析的领域工作。 在经济学、神经科学和物理等这些领域,因果关系的概念应该被解释为一种统计尺度。我们向非专业读者介绍两个时间序列之间的重大因果关系,并举例说明计算方法:如果对过去所观察的X美元提高未来Y美元的可预测性,而与过去仅用美元作出的预测相比,仅用Y美元。换句话说,如果从过去两个数量中提取的信息能够改善对另一个时间序列的未来的预测,即使缺乏任何物理互动机制,那么,我们向普通读者介绍“Granger-cause causes”的信号:如果对过去所观察到的X美元提高未来Y美元的可预测性,那么在频率领域使用非参数估计方法提供数字实例。我们讨论了这一方法的局限性和应用以及衡量因果关系的其他替代办法。