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Predictions In Time Series Using Regression Models Frantiek Tulajter Auth

  • SKU: BELL-4259396
Predictions In Time Series Using Regression Models Frantiek Tulajter Auth
$ 31.00 $ 45.00 (-31%)

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Predictions In Time Series Using Regression Models Frantiek Tulajter Auth instant download after payment.

Publisher: Springer New York
File Extension: PDF
File size: 4.64 MB
Pages: 237
Author: František à tulajter (auth.)
ISBN: 9781441929655, 9781475736298, 1441929657, 1475736290
Language: English
Year: 2002

Product desciption

Predictions In Time Series Using Regression Models Frantiek Tulajter Auth by František à Tulajter (auth.) 9781441929655, 9781475736298, 1441929657, 1475736290 instant download after payment.

This book deals with the statistical analysis of time series and covers situations that do not fit into the framework of stationary time series, as described in classic books by Box and Jenkins, Brockwell and Davis and others. Estimators and their properties are presented for regression parameters of regression models describing linearly or nonlineary the mean and the covariance functions of general time series. Using these models, a cohesive theory and method of predictions of time series are developed. The methods are useful for all applications where trend and oscillations of time correlated data should be carefully modeled, e.g., ecology, econometrics, and finance series. The book assumes a good knowledge of the basis of linear models and time series.

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