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A graphical test for local self-similarity in univariate data

机译:单变量数据中局部自相似性的图形化测试

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The Pareto distribution, or power-law distribution, has long been used to model phenomena in many fields, including wildfire sizes, earthquake seismic moments and stock price changes. Recent observations have brought the fit of the Pareto into question, however, particularly in the upper tail where it often overestimates the frequency of the largest events. This paper proposes a graphical self-similarity test specifically designed to assess whether a Pareto distribution fits better than a tapered Pareto or another alternative. Unlike some model selection methods, this graphical test provides the advantage of highlighting where the model fits well and where it breaks down. Specifically, for data that seem to be better modeled by the tapered Pareto or other alternatives, the test assesses the degree of local self-similarity at each value where the test is computed. The basic properties of the graphical test and its implementation are discussed, and applications of the test to seismological, wildfire, and financial data are considered.
机译:帕累托分布(或称幂律分布)长期以来一直用于对许多领域的现象进行建模,包括野火大小,地震地震矩和股价变化。然而,最近的观察结果使帕累托的适合性受到质疑,尤其是在上尾巴,它常常高估了最大事件的发生频率。本文提出了一种图形自相似性测试,该测试专门用于评估帕累托分布是否比锥形帕累托或其他替代方法更合适。与某些模型选择方法不同,此图形测试的优点是突出显示模型适合的位置以及模型的损坏位置。具体来说,对于似乎可以用锥形Pareto或其他替代方法更好地建模的数据,该测试会评估计算该测试的每个值处的局部自相似程度。讨论了图形测试的基本属性及其实现,并考虑了该测试在地震,野火和财务数据中的应用。

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