Singular spectrum analysis for time series

Singular spectrum analysis (SSA) is a technique of time series analysis and forecasting combining elements of classical time series analysis, multivariate statistics, multivariate geometry, dynamical systems and signal processing. SSA seeks to decompose the original series into a sum of a small numb...

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Auteurs principaux : Golyandina Nina (Auteur), Zhigljavsky Anatoly (Auteur)
Format : Livre
Langue : anglais
Titre complet : Singular spectrum analysis for time series / Nina Golyandina, Anatoly Zhigljavsky
Publié : Heidelberg [etc.] : Springer , C 2013
Description matérielle : 1 vol. (VII-119 p.)
Collection : SpringerBriefs in statistics (Print)
Contenu : Introduction: Preliminaries. SSA Methodology and the Structure of the Book. SSA Topics Outside the Scope of this Book. Common Symbols and Acronyms. Basic SSA: The Main Algorithm. Potential of Basic SSA. Models of Time Series and SSA Objectives. Choice of Parameters in Basic SSA. Some Variations of Basic SSA. SSA for Forecasting, interpolation, Filtration and Estimation: SSA Forecasting Algorithms. LRR and Associated Characteristic Polynomials. Recurrent Forecasting as Approximate Continuation. Confidence Bounds for the Forecast. Summary and Recommendations on Forecasting Parameters. Case Study: Fortified Wine. Missing Value Imputation. Subspace-Based Methods and Estimation of Signal Parameters. SSA and Filters
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