Iterative Algorithms for Short-term Forecasting - Nina Kondrashova - Bøker - LAP LAMBERT Academic Publishing - 9783659634581 - 28. november 2014
Ved uoverensstemmelse mellom cover og tittel gjelder tittel

Iterative Algorithms for Short-term Forecasting

Pris
NOK 499

Bestillingsvarer

Forventes levert 4. - 12. aug
Få varsel om nye utgivelser fra Nina Kondrashova
Legg til iMusic ønskeliste
eller

Ikke vurdert ennå

The monograph examines the relaxation iterative algorithms for short-term forecasting of real processes. Their main structural features and the convergence are presented. These algorithms can work as with the small sample sizes (ranging from three records) so with the large amount of data (from three dozen up to thousand variables and up to five dozen of thousand records). Since in these algorithms is observed balance between speed and complexity of models which they build, there are suggested ways to increase the accuracy of solutions if volume of observations is small. For example, to accelerate drag selection for patients, there are used different sample divisions, adaptive prognosis and complex forecasting that takes into account low-frequency (trend) and high-frequency component (residue) of the real process. But one step forward forecast of space weather with a lot of records has shown the high accuracy on the examination sample without mentioned accuracy improvement tools. Comparison of oil price forecasts obtained via GMDH against well known methods showed greater accuracy for the first ones. This book is intended for specialists in the field of forecasting complex systems.

Media Bøker     Pocketbok   (Bok med mykt omslag og limt rygg)
Utgitt 28. november 2014
ISBN13 9783659634581
Utgivere LAP LAMBERT Academic Publishing
Antall sider 116
Mål 7 × 150 × 220 mm   ·   191 g
Språk Tysk