Three Essays on Nonlinear Time Series
Author: Jin-Lung Lin
Publisher:
Published: 1991
Total Pages: 148
ISBN-13:
DOWNLOAD EBOOKRead and Download eBook Full
Author: Jin-Lung Lin
Publisher:
Published: 1991
Total Pages: 148
ISBN-13:
DOWNLOAD EBOOKAuthor: Niels Haldrup
Publisher: OUP Oxford
Published: 2014-06-26
Total Pages: 393
ISBN-13: 0191669547
DOWNLOAD EBOOKThis edited collection concerns nonlinear economic relations that involve time. It is divided into four broad themes that all reflect the work and methodology of Professor Timo Teräsvirta, one of the leading scholars in the field of nonlinear time series econometrics. The themes are: Testing for linearity and functional form, specification testing and estimation of nonlinear time series models in the form of smooth transition models, model selection and econometric methodology, and finally applications within the area of financial econometrics. All these research fields include contributions that represent state of the art in econometrics such as testing for neglected nonlinearity in neural network models, time-varying GARCH and smooth transition models, STAR models and common factors in volatility modeling, semi-automatic general to specific model selection for nonlinear dynamic models, high-dimensional data analysis for parametric and semi-parametric regression models with dependent data, commodity price modeling, financial analysts earnings forecasts based on asymmetric loss function, local Gaussian correlation and dependence for asymmetric return dependence, and the use of bootstrap aggregation to improve forecast accuracy. Each chapter represents original scholarly work, and reflects the intellectual impact that Timo Teräsvirta has had and will continue to have, on the profession.
Author: Jason J. Wu
Publisher:
Published: 2007
Total Pages: 168
ISBN-13:
DOWNLOAD EBOOKAuthor: Robert James Town
Publisher:
Published: 1990
Total Pages: 332
ISBN-13:
DOWNLOAD EBOOKAuthor: Jan G. De Gooijer
Publisher: Springer
Published: 2017-03-30
Total Pages: 626
ISBN-13: 3319432524
DOWNLOAD EBOOKThis book provides an overview of the current state-of-the-art of nonlinear time series analysis, richly illustrated with examples, pseudocode algorithms and real-world applications. Avoiding a “theorem-proof” format, it shows concrete applications on a variety of empirical time series. The book can be used in graduate courses in nonlinear time series and at the same time also includes interesting material for more advanced readers. Though it is largely self-contained, readers require an understanding of basic linear time series concepts, Markov chains and Monte Carlo simulation methods. The book covers time-domain and frequency-domain methods for the analysis of both univariate and multivariate (vector) time series. It makes a clear distinction between parametric models on the one hand, and semi- and nonparametric models/methods on the other. This offers the reader the option of concentrating exclusively on one of these nonlinear time series analysis methods. To make the book as user friendly as possible, major supporting concepts and specialized tables are appended at the end of every chapter. In addition, each chapter concludes with a set of key terms and concepts, as well as a summary of the main findings. Lastly, the book offers numerous theoretical and empirical exercises, with answers provided by the author in an extensive solutions manual.
Author: Tse-Chun Lin
Publisher: Rozenberg Publishers
Published: 2009
Total Pages: 146
ISBN-13: 9036101514
DOWNLOAD EBOOKAuthor: Myungsup Kim
Publisher:
Published: 2005
Total Pages: 300
ISBN-13:
DOWNLOAD EBOOKAuthor: Hiroyuki Ito
Publisher:
Published: 2004
Total Pages: 464
ISBN-13:
DOWNLOAD EBOOKAuthor: J. Franke
Publisher: Springer Science & Business Media
Published: 2012-12-06
Total Pages: 297
ISBN-13: 1461578213
DOWNLOAD EBOOKClassical time series methods are based on the assumption that a particular stochastic process model generates the observed data. The, most commonly used assumption is that the data is a realization of a stationary Gaussian process. However, since the Gaussian assumption is a fairly stringent one, this assumption is frequently replaced by the weaker assumption that the process is wide~sense stationary and that only the mean and covariance sequence is specified. This approach of specifying the probabilistic behavior only up to "second order" has of course been extremely popular from a theoretical point of view be cause it has allowed one to treat a large variety of problems, such as prediction, filtering and smoothing, using the geometry of Hilbert spaces. While the literature abounds with a variety of optimal estimation results based on either the Gaussian assumption or the specification of second-order properties, time series workers have not always believed in the literal truth of either the Gaussian or second-order specifica tion. They have none-the-less stressed the importance of such optimali ty results, probably for two main reasons: First, the results come from a rich and very workable theory. Second, the researchers often relied on a vague belief in a kind of continuity principle according to which the results of time series inference would change only a small amount if the actual model deviated only a small amount from the assum ed model.