dorsal/arxiv
View SchemaMultiscale Trend Analysis
| Authors | I. Zaliapin, A. Gabrielov, V. Keilis-Borok |
|---|---|
| Categories | |
| ArXiv ID | physics/0305013 |
| URL | https://arxiv.org/abs/physics/0305013 |
| DOI | 10.1142/S0218348X04002604 |
| Journal | Fractals, 12, No. 3, 275-292 (2004) |
Abstract
This paper introduces a multiscale analysis based on optimal piecewise linear approximations of time series. An optimality criterion is formulated and on its base a computationally effective algorithm is constructed for decomposition of a time series into a hierarchy of trends (local linear approximations) at different scales. The top of the hierarchy is the global linear approximation over the whole observational interval, the bottom is the original time series. Each internal level of the hierarchy corresponds to a piecewise linear approximation of analyzed series. Possible applications of the introduced Multiscale Trend Analysis (MTA) go far beyond the linear interpolation problem: This paper develops and illustrates methods of self-affine, hierarchical, and correlation analyses of time series.
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"abstract": "This paper introduces a multiscale analysis based on optimal piecewise linear\napproximations of time series. An optimality criterion is formulated and on its\nbase a computationally effective algorithm is constructed for decomposition of\na time series into a hierarchy of trends (local linear approximations) at\ndifferent scales. The top of the hierarchy is the global linear approximation\nover the whole observational interval, the bottom is the original time series.\nEach internal level of the hierarchy corresponds to a piecewise linear\napproximation of analyzed series. Possible applications of the introduced\nMultiscale Trend Analysis (MTA) go far beyond the linear interpolation problem:\nThis paper develops and illustrates methods of self-affine, hierarchical, and\ncorrelation analyses of time series.",
"arxiv_id": "physics/0305013",
"authors": [
"I. Zaliapin",
"A. Gabrielov",
"V. Keilis-Borok"
],
"categories": [
"physics.data-an"
],
"doi": "10.1142/S0218348X04002604",
"journal_ref": "Fractals, 12, No. 3, 275-292 (2004)",
"title": "Multiscale Trend Analysis",
"url": "https://arxiv.org/abs/physics/0305013"
},
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