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Detecting linear trend changes in data sequences

Hyeyoung Maeng, Piotr Fryźlewicz

2023Statistical Papers15 citationsDOIOpen Access PDF

Abstract

Abstract We propose TrendSegment, a methodology for detecting multiple change-points corresponding to linear trend changes in one dimensional data. A core ingredient of TrendSegment is a new Tail-Greedy Unbalanced Wavelet transform: a conditionally orthonormal, bottom-up transformation of the data through an adaptively constructed unbalanced wavelet basis, which results in a sparse representation of the data. Due to its bottom-up nature, this multiscale decomposition focuses on local features in its early stages and on global features next which enables the detection of both long and short linear trend segments at once. To reduce the computational complexity, the proposed method merges multiple regions in a single pass over the data. We show the consistency of the estimated number and locations of change-points. The practicality of our approach is demonstrated through simulations and two real data examples, involving Iceland temperature data and sea ice extent of the Arctic and the Antarctic. Our methodology is implemented in the R package , available from CRAN.

Topics & Concepts

Orthonormal basisWaveletComputer scienceTransformation (genetics)Consistency (knowledge bases)AlgorithmChange detectionRepresentation (politics)Wavelet transformBasis (linear algebra)Data miningMathematicsArtificial intelligenceBiochemistryQuantum mechanicsChemistryLawGenePoliticsPhysicsPolitical scienceGeometryStatistical and numerical algorithmsImage and Signal Denoising MethodsClimate variability and models
Detecting linear trend changes in data sequences | Litcius