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Time-Warping Invariants of Multidimensional Time Series

Joscha Diehl, Kurusch Ebrahimi-Fard, Nikolas Tapia

2020Acta Applicandae Mathematicae21 citationsDOIOpen Access PDF

Abstract

Abstract In data science, one is often confronted with a time series representing measurements of some quantity of interest. Usually, in a first step, features of the time series need to be extracted. These are numerical quantities that aim to succinctly describe the data and to dampen the influence of noise. In some applications, these features are also required to satisfy some invariance properties. In this paper, we concentrate on time-warping invariants. We show that these correspond to a certain family of iterated sums of the increments of the time series, known as quasisymmetric functions in the mathematics literature. We present these invariant features in an algebraic framework, and we develop some of their basic properties.

Topics & Concepts

MathematicsIterated functionSeries (stratigraphy)Invariant (physics)Algebraic numberAlgebra over a fieldPure mathematicsApplied mathematicsPartial differential equationPartial functionDiscrete mathematicsAlgebraic structureTime seriesIterated function systemInvariant theorySeries expansionLTI system theoryChaos control and synchronizationTime Series Analysis and ForecastingStatistical and numerical algorithms
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