STUDY OF TESTS FOR TREND IN TIME SERIES

Q4 Medicine
D. Paiva, T. Sáfadi
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引用次数: 1

Abstract

The time series methodology is an important tool when using data over time. The time series can be composed of the components trend (Tt), seasonality (St) and the random error (at). The aim of this study was to evaluate the tests used to analyze the trend component, which were: Pettitt, Run, Mann-Kendall, Cox-Stuart and the unit root tests (Dickey-Fuller, Dickey-Fuller Augmented and Zivot and Andrews), given that there is a discrepancy between the test results found in the literature. The four series analyzed were the maximum temperature in the Lavras city, MG, Brazil, the unemployment rate in the Metropolitan Region of S~ao Paulo (RMSP), the Broad Consumer Price Index (IPCA) and the nominal Gross Domestic Product (GDP) of Brazil. It was found that the unit root tests showed similar results in relation to the presence of the stochastic trend for all series. Furthermore, the turning point of the Pettitt test diverged from all the structural breaks found through the Zivot and Andrews test, except for the GDP series. Therefore, it was found that the trend tests diverged, obtaining similar results only in relation to the unemployment series.
时间序列趋势检验的研究
在使用随时间变化的数据时,时间序列方法是一个重要的工具。时间序列可以由趋势分量(Tt)、季节性分量(St)和随机误差分量(at)组成。本研究的目的是评估用于分析趋势成分的测试,这些测试是:Pettitt, Run, Mann-Kendall, Cox-Stuart和单位根测试(Dickey-Fuller, Dickey-Fuller Augmented和Zivot and Andrews),因为在文献中发现的测试结果存在差异。所分析的四个序列分别是巴西MG州拉夫拉斯市的最高气温、圣保罗大都市区的失业率(RMSP)、广义消费者价格指数(IPCA)和巴西名义国内生产总值(GDP)。发现单位根检验在所有序列的随机趋势存在方面显示出相似的结果。此外,除了GDP序列外,Pettitt检验的拐点偏离了Zivot和Andrews检验发现的所有结构性断裂。因此,发现趋势检验是不一致的,只有在失业系列中才得到类似的结果。
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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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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53 weeks
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