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首页> 外文期刊>American Journal of Political Science >Cycles in Politics: Wavelet Analysis of Political Time Series
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Cycles in Politics: Wavelet Analysis of Political Time Series

机译:政治周期:政治时间序列的小波分析

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摘要

Spectral analysis and ARMA models have been the most common weapons of choice for the detection of cycles in political time series. Controversies about cycles, however, tend to revolve around an issue that both techniques are badly equipped to address: the possibility of irregular cycles without fixed periodicity throughout the entire time series. This has led to two main consequences. On the one hand, proponents of cyclical theories have often dismissed established statistical techniques. On the other hand, proponents of established techniques have dismissed the possibility of cycles without fixed periodicity. Wavelets allow the detection of transient and coexisting cycles and structural breaks in periodicity. In this article, we present the tools of wavelet analysis and apply them to the study of two lingering puzzles in the political science literature: the existence of cycles in election returns in the United States and in the severity of major power wars.
机译:频谱分析和ARMA模型已成为检测政治时间序列中周期的最常用武器。但是,关于周期的争论往往围绕着两种技术都无法很好地解决的问题:在整个时间序列中不固定周期的不规则周期的可能性。这导致了两个主要后果。一方面,周期性理论的拥护者常常不赞成建立统计技术。另一方面,已有技术的拥护者已经消除了没有固定周期性的循环的可能性。小波可检测瞬态和共存周期以及周期性结构中断。在本文中,我们介绍了小波分析的工具,并将其应用于政治学文献中两个挥之不去的难题:美国选举结果的轮回存在和大国战争的严重性。

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