Entropy Measures for Data Analysis: Theory, Algorithms and Applications
Entropies and entropy-like quantities play an increasing role in modern non-linear data analysis. Fields that benefit from this application range from biosignal analysis to econophysics and engineering. This issue is a collection of papers touching on different aspects of entropy measures in data an...
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Year of Publication: | 2019 |
Language: | English |
Physical Description: | 1 electronic resource (260 p.) |
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Keller, Karsten auth Entropy Measures for Data Analysis: Theory, Algorithms and Applications Entropy Measures for Data Analysis MDPI - Multidisciplinary Digital Publishing Institute 2019 1 electronic resource (260 p.) text txt rdacontent computer c rdamedia online resource cr rdacarrier Entropies and entropy-like quantities play an increasing role in modern non-linear data analysis. Fields that benefit from this application range from biosignal analysis to econophysics and engineering. This issue is a collection of papers touching on different aspects of entropy measures in data analysis, as well as theoretical and computational analyses. The relevant topics include the difficulty to achieve adequate application of entropy measures and the acceptable parameter choices for those entropy measures, entropy-based coupling, and similarity analysis, along with the utilization of entropy measures as features in automatic learning and classification. Various real data applications are given. English fault diagnosis empirical mode decomposition auditory attention Dempster-Shafer evidence theory simulation uncertainty of basic probability assignment center of pressure displacement particle size distribution multivariate analysis symbolic analysis permutation entropy short time records co-evolution plausibility transformation experiment of design cross-entropy method weighted Hartley entropy firefly algorithm embedded dimension entropy measure effective transfer entropy treadmill walking ordinal patterns complex fuzzy set entropy visualization belief entropy signal classification machine learning evaluation novelty detection selfsimilar measure Permutation entropy automatic learning cross wavelet transform cross-visibility graphs Kolmogorov-Sinai entropy distance Shannon-type relations Tsallis entropy market crash support vector machine (SVM) conditional entropy of ordinal patterns sample entropy learning electroencephalography (EEG) meta-heuristic entropy data transformation information entropy signal analysis synchronization analysis similarity indices data analysis geodesic distance auditory attention classifier entropy measures distance induced vague entropy analog circuit vague entropy complex vague soft set entropy balance equation parametric t-distributed stochastic neighbor embedding global optimization learning systems image entropy algorithmic complexity support vector machine system coupling relevance analysis Chinese stock sectors Shannon entropy linear discriminant analysis (LDA) information information transfer dual-tasking non-probabilistic entropy 3-03928-032-5 |
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English |
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Keller, Karsten |
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Keller, Karsten Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
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Keller, Karsten |
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Keller, Karsten |
title |
Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
title_full |
Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
title_fullStr |
Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
title_full_unstemmed |
Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
title_auth |
Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
title_alt |
Entropy Measures for Data Analysis |
title_new |
Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
title_sort |
entropy measures for data analysis: theory, algorithms and applications |
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MDPI - Multidisciplinary Digital Publishing Institute |
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2019 |
physical |
1 electronic resource (260 p.) |
isbn |
3-03928-033-3 3-03928-032-5 |
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Not Illustrated |
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AT kellerkarsten entropymeasuresfordataanalysistheoryalgorithmsandapplications AT kellerkarsten entropymeasuresfordataanalysis |
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(CKB)4100000010106354 (oapen)https://directory.doabooks.org/handle/20.500.12854/46559 (EXLCZ)994100000010106354 |
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Entropy Measures for Data Analysis: Theory, Algorithms and Applications |
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1796652263388741632 |
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