Spelling suggestions: "subject:"time series analysis"" "subject:"lime series analysis""
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Modelling long-term persistence in hydrological time seriesThyer, Mark Andrew. January 2000 (has links)
Department of Civil, Surveying and Environmental Engineering. Includes bibliographical references (leaves R-1--R-9)
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The development and validation of a fuzzy logic method for time-series extrapolation /Plouffe, Jeffrey Stewart. January 2005 (has links)
Thesis (Ph. D.)--University of Rhode Island, 2005. / Typescript. Includes bibliographical references (v. 2: leaves 582-593).
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Bootstrap procedures for dynamic factor analysisZhang, Guangjian, January 2006 (has links)
Thesis (Ph. D.)--Ohio State University, 2006. / Title from first page of PDF file. Includes bibliographical references (p. 110-114).
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Zeitreihenanalyse natuerlicher Systeme mit neuronalen Netzen undWeichert, Andreas 27 February 1998 (has links)
No description available.
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Kernel-based Copula ProcessesNg, Eddie Kai Ho 22 February 2011 (has links)
The field of time-series analysis has made important contributions to a wide spectrum of applications such as tide-level studies in hydrology, natural resource prospecting in geo-statistics, speech recognition, weather forecasting, financial trading, and economic forecasts and analysis.
Nevertheless, the analysis of the non-Gaussian and non-stationary features of time-series remains challenging for the current state-of-art models.
This thesis proposes an innovative framework that leverages the theory of copula,
combined with a probabilistic framework from the machine learning community, to produce a versatile tool for multiple time-series analysis. I coined this new model Kernel-based Copula Processes (KCPs). Under the new proposed framework, various idiosyncracies can be modeled compactly via a kernel function for each individual time-series, and long-range dependency can be captured by a copula function. The copula function separates the marginal behavior and serial dependency structures, thus allowing them to be modeled separately and with much greater flexibility.
Moreover, the codependent structure of a large number of time-series with potentially vastly different characteristics can be captured in a compact and elegant fashion through the notion of a binding copula. This feature allows a highly heterogeneous model to be built, breaking free from the homogeneous limitation of most conventional models.
The KCPs have demonstrated superior predictive power when used to forecast a multitude of data sets from meteorological and financial areas. Finally, the versatility of the KCP model is exemplified when it was successfully applied to non-trivial classification problems unaltered.
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Financial time series analysisYin, Jiang Ling January 2011 (has links)
University of Macau / Faculty of Science and Technology / Department of Computer and Information Science
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Time frequency distribution associated with adaptive Fourier decomposition and its variationMai, Wei Xiong January 2012 (has links)
University of Macau / Faculty of Science and Technology / Department of Mathematics
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Applications of adaptive Fourier decomposition to financial dataShi, Rong January 2012 (has links)
University of Macau / Faculty of Science and Technology / Department of Mathematics
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Kernel-based Copula ProcessesNg, Eddie Kai Ho 22 February 2011 (has links)
The field of time-series analysis has made important contributions to a wide spectrum of applications such as tide-level studies in hydrology, natural resource prospecting in geo-statistics, speech recognition, weather forecasting, financial trading, and economic forecasts and analysis.
Nevertheless, the analysis of the non-Gaussian and non-stationary features of time-series remains challenging for the current state-of-art models.
This thesis proposes an innovative framework that leverages the theory of copula,
combined with a probabilistic framework from the machine learning community, to produce a versatile tool for multiple time-series analysis. I coined this new model Kernel-based Copula Processes (KCPs). Under the new proposed framework, various idiosyncracies can be modeled compactly via a kernel function for each individual time-series, and long-range dependency can be captured by a copula function. The copula function separates the marginal behavior and serial dependency structures, thus allowing them to be modeled separately and with much greater flexibility.
Moreover, the codependent structure of a large number of time-series with potentially vastly different characteristics can be captured in a compact and elegant fashion through the notion of a binding copula. This feature allows a highly heterogeneous model to be built, breaking free from the homogeneous limitation of most conventional models.
The KCPs have demonstrated superior predictive power when used to forecast a multitude of data sets from meteorological and financial areas. Finally, the versatility of the KCP model is exemplified when it was successfully applied to non-trivial classification problems unaltered.
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Wavelet-based estimation for trend contaminated long memory processes /Craigmile, Peter Francis, January 2000 (has links)
Thesis (Ph. D.)--University of Washington, 2000. / Vita. Includes bibliographical references (leaves 164-170).
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