Application of regression models in predicting time series / by Esin, Yoruk
Material type:
- 9781835351031
- B28 R4
Item type | Current library | Home library | Call number | Status | Barcode | |
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Central Science Library | Central Science Library | B28 R4 (Browse shelf(Opens below)) | Available | SL1656007 |
Includes Bibliography
For more than a century, regression techniques have been an essential component of time arrangement research. Recent developments have allowed for genuine gains in areas like non-constant information where a direct model isn't applicable. This book introduces the reader to newer advancements and a wider selection of regression models and techniques for analysing timetables. Regression Models for Time Series Analysis is accessible to everyone who is familiar with the basic modern concepts of factual deduction and provides a really important investigation of recent measurable improvements. The crucial class of models known as summed up straight models (GLM), which provides, under some circumstances, a bound-together regression hypothesis appropriate for continuous, all-out, and check information, is among them. The designers purposefully extend the GLM methodology to time arrangements where the key information and covariate information are both random and stochastically dependent. They familiarise readers with various regression models developed over the past thirty years or so and consolidate earlier and more recent findings about state space models.
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