Chunchun Gao , Benjamin F. Chao , Bing Tan , Xudong Wu
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This study aims to develop a comprehensive approach based on the <span><math><mi>t</mi></math></span>-distribution within a rigorous statistical context, aiming to facilitate significance tests of cross correlation for general signals with specified time shifts or ranges. Extensive Monte Carlo experiments substantiate its robustness, thereby paving the way for accurate and expeditious identification of statistically (hence potentially physically) meaningful correlations in general. As an example, we examine critically the previously purported significant correlations between ENSO (El Niño Southern Oscillation) and global terrestrial water storage variations derived from the GRACE (Gravity Recovery and Climate Experiment) satellite mission, demonstrating that they are subject to questioning in the absence of complete significance testing.</p></div>","PeriodicalId":55089,"journal":{"name":"Global and Planetary Change","volume":"241 ","pages":"Article 104549"},"PeriodicalIF":4.0000,"publicationDate":"2024-08-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Significance testing for cross correlation: A critical examination of correlations between ENSO and GRACE-derived terrestrial water storage variabilities\",\"authors\":\"Chunchun Gao , Benjamin F. 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引用次数: 0
摘要
交叉相关在地球物理领域有着广泛的应用,用于测量物理量之间的线性联系或关系。然而,有关其统计显著性检验的全面论述仍然匮乏,而这对于区分有意义的结果与仅仅源于偶然性或纯粹随机性的结果至关重要。SPSS 和 MATLAB 等统计分析工具中常用的传统显著性检验理论方法,只适用于处理白噪声等理想化情况。如果随意使用这些方法来分析红噪等地球物理信号,可能会得出不合理的结论。本研究旨在开发一种基于严格统计背景下 t 分布的综合方法,旨在促进对具有指定时间偏移或范围的一般信号进行交叉相关性显著性检验。广泛的蒙特卡罗实验证明了该方法的稳健性,从而为准确、快速地识别一般统计意义上的(因此可能是物理意义上的)相关性铺平了道路。例如,我们批判性地研究了之前声称的厄尔尼诺南方涛动(ENSO)与全球陆地储水量变化之间的显著相关性,这些相关性来自 GRACE(重力恢复和气候实验)卫星任务,表明在缺乏完整的显著性检验的情况下,这些相关性会受到质疑。
Significance testing for cross correlation: A critical examination of correlations between ENSO and GRACE-derived terrestrial water storage variabilities
The cross correlation has a wide range of applications in geophysical fields for measuring linear connections or relationships among physical quantities. Nonetheless, there remains a dearth of comprehensive discourse regarding its statistical significance testing, which is crucial for differentiating meaningful outcomes from those merely stemming from fortuity or pure randomness. Conventional theoretical methods for significance testing, commonly used in statistical analysis tools such as SPSS and MATLAB, are only applicable when dealing with idealized circumstances such as white noise. In discretionary application of these methods to analyze geophysical signals with, say, red noise may result in potentially unjustified conclusions. This study aims to develop a comprehensive approach based on the -distribution within a rigorous statistical context, aiming to facilitate significance tests of cross correlation for general signals with specified time shifts or ranges. Extensive Monte Carlo experiments substantiate its robustness, thereby paving the way for accurate and expeditious identification of statistically (hence potentially physically) meaningful correlations in general. As an example, we examine critically the previously purported significant correlations between ENSO (El Niño Southern Oscillation) and global terrestrial water storage variations derived from the GRACE (Gravity Recovery and Climate Experiment) satellite mission, demonstrating that they are subject to questioning in the absence of complete significance testing.
期刊介绍:
The objective of the journal Global and Planetary Change is to provide a multi-disciplinary overview of the processes taking place in the Earth System and involved in planetary change over time. The journal focuses on records of the past and current state of the earth system, and future scenarios , and their link to global environmental change. Regional or process-oriented studies are welcome if they discuss global implications. Topics include, but are not limited to, changes in the dynamics and composition of the atmosphere, oceans and cryosphere, as well as climate change, sea level variation, observations/modelling of Earth processes from deep to (near-)surface and their coupling, global ecology, biogeography and the resilience/thresholds in ecosystems.
Key criteria for the consideration of manuscripts are (a) the relevance for the global scientific community and/or (b) the wider implications for global scale problems, preferably combined with (c) having a significance beyond a single discipline. A clear focus on key processes associated with planetary scale change is strongly encouraged.
Manuscripts can be submitted as either research contributions or as a review article. Every effort should be made towards the presentation of research outcomes in an understandable way for a broad readership.