Publication | Open Access
<b>mosum</b>: A Package for Moving Sums in Change-Point Analysis
29
Citations
37
References
2021
Year
Change-point AnalysisEngineeringChange AnalysisData ScienceShift DetectionStructural ChangesSum StatisticsChange DetectionSignal ProcessingFast MaTrend AnalysisFunctional Data AnalysisStatisticsR Package MosumNonlinear Time SeriesStochastic Modeling
Time series data, i.e., temporally ordered data, is routinely collected and analysed in in many fields of natural science, economy, technology and medicine, where it is of importance to verify the assumption of stochastic stationarity prior to modeling the data. Nonstationarities in the data are often attributed to structural changes with segments between adjacent change-points being approximately stationary. A particularly important, and thus widely studied, problem in statistics and signal processing is to detect changes in the mean at unknown time points. In this paper, we present the R package mosum, which implements elegant and mathematically well-justified procedures for the multiple mean change problem using the moving sum statistics.
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