000 | 03316nam a22005055i 4500 | ||
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001 | 978-3-031-01909-8 | ||
003 | DE-He213 | ||
005 | 20240730163747.0 | ||
007 | cr nn 008mamaa | ||
008 | 220601s2016 sz | s |||| 0|eng d | ||
020 |
_a9783031019098 _9978-3-031-01909-8 |
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024 | 7 |
_a10.1007/978-3-031-01909-8 _2doi |
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050 | 4 | _aQA76.9.D343 | |
072 | 7 |
_aUNF _2bicssc |
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_aUYQE _2bicssc |
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_aUNF _2thema |
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_aUYQE _2thema |
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_a006.312 _223 |
100 | 1 |
_aMcCracken, James M. _eauthor. _4aut _4http://id.loc.gov/vocabulary/relators/aut _980422 |
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245 | 1 | 0 |
_aExploratory Causal Analysis with Time Series Data _h[electronic resource] / _cby James M. McCracken. |
250 | _a1st ed. 2016. | ||
264 | 1 |
_aCham : _bSpringer International Publishing : _bImprint: Springer, _c2016. |
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300 |
_aXIII, 133 p. _bonline resource. |
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336 |
_atext _btxt _2rdacontent |
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_acomputer _bc _2rdamedia |
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_aonline resource _bcr _2rdacarrier |
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_atext file _bPDF _2rda |
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490 | 1 |
_aSynthesis Lectures on Data Mining and Knowledge Discovery, _x2151-0075 |
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505 | 0 | _aPreface -- Acknowledgments -- Introduction -- Causality Studies -- Time Series Causality Tools -- Exploratory Causal Analysis -- Conclusions -- Bibliography -- Author's Biography. | |
520 | _aMany scientific disciplines rely on observational data of systems for which it is difficult (or impossible) to implement controlled experiments. Data analysis techniques are required for identifying causal information and relationships directly from such observational data. This need has led to the development of many different time series causality approaches and tools including transfer entropy, convergent cross-mapping (CCM), and Granger causality statistics. A practicing analyst can explore the literature to find many proposals for identifying drivers and causal connections in time series data sets. Exploratory causal analysis (ECA) provides a framework for exploring potential causal structures in time series data sets and is characterized by a myopic goal to determine which data series from a given set of series might be seen as the primary driver. In this work, ECA is used on several synthetic and empirical data sets, and it is found that all of the tested time series causality tools agree with each other (and intuitive notions of causality) for many simple systems but can provide conflicting causal inferences for more complicated systems. It is proposed that such disagreements between different time series causality tools during ECA might provide deeper insight into the data than could be found otherwise. | ||
650 | 0 |
_aData mining. _93907 |
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650 | 0 |
_aStatisticsĀ . _931616 |
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650 | 1 | 4 |
_aData Mining and Knowledge Discovery. _980423 |
650 | 2 | 4 |
_aStatistics. _914134 |
710 | 2 |
_aSpringerLink (Online service) _980424 |
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773 | 0 | _tSpringer Nature eBook | |
776 | 0 | 8 |
_iPrinted edition: _z9783031007811 |
776 | 0 | 8 |
_iPrinted edition: _z9783031030376 |
830 | 0 |
_aSynthesis Lectures on Data Mining and Knowledge Discovery, _x2151-0075 _980425 |
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856 | 4 | 0 | _uhttps://doi.org/10.1007/978-3-031-01909-8 |
912 | _aZDB-2-SXSC | ||
942 | _cEBK | ||
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_c84958 _d84958 |