Severe Testing and Characterization of Change Points in Climate Time Series

James Ricketts, Roger N. Jones
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Abstract

This paper applies misspecification (M-S) testing to the detection of abrupt changes in climate regimes as part of undertaking severe testing of climate shifts versus trends. Severe testing, proposed by Mayo and Spanos, provides severity criteria for evaluating statistical inference using probative criteria, requiring tests that would find any flaws present. Applying M-S testing increases the severity of hypothesis testing. We utilize a systematic approach, based on well-founded principles that combines the development of probative criteria with error statistical testing. Given the widespread acceptance of trend-like change in climate, especially temperature, tests that produce counter-examples need proper specification. Reasoning about abrupt shifts embedded within a complex times series requires detection methods sensitive to level changes, accurate in timing, and tolerant of simultaneous changes of trend, variance, autocorrelation, and red-drift, given that many of these measures may shift together. Our preference is to analyse the raw data to avoid pre-emptive assumptions and test the results for robustness. We use a simple detection method, based on the Maronna-Yohai (MY) test, then re-assess nominated shift-points using tests with varied null hypotheses guided by M-S testing. Doing so sharpens conclusions while avoiding an over-reliance on data manipulation, which carries its own assumptions.
气候时间序列变化点的严格检验与表征
作为对气候变化与趋势进行严格测试的一部分,本文将错误规范(M-S)测试应用于气候制度突变的检测。Mayo和Spanos提出的严格测试为使用证明标准评估统计推断提供了严重性标准,要求测试能够发现存在的任何缺陷。采用M-S检验增加了假设检验的严峻性。我们采用一种系统的方法,基于有充分根据的原则,将证明标准的发展与误差统计测试相结合。鉴于气候(尤其是温度)的趋势变化已被广泛接受,产生反例的测试需要适当的规范。对嵌入在复杂时间序列中的突变进行推理,需要检测方法对电平变化敏感,定时准确,并且能够容忍趋势、方差、自相关和红漂的同时变化,因为许多这些测量可能一起移动。我们倾向于分析原始数据,以避免先发制人的假设,并测试结果的稳健性。我们使用一种简单的检测方法,基于marronna - yohai (MY)检验,然后使用M-S检验指导下的不同零假设检验重新评估指定的移位点。这样做可以使结论更加清晰,同时避免过度依赖数据操纵,因为数据操纵带有自己的假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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