Forecast Evaluation Methods

Introduction of selected modelfree methods to evaluate specific forecast series and to compare pairwise competing series of forecasts


Hausarbeit, 2016

26 Seiten, Note: 1,0


Inhaltsangabe oder Einleitung

This seminar paper aims to briefly introduce selected modelfree methods which can be used both to evaluate specific forecast series and to compare pairwise competing series of forecasts. Problems arising from parameter estimation uncertainty and nested forecast generating models are illuminated curtly. The model-free methods will be applied to three series of annual german economic forecasts from 1970 - 2015 provided by the joint forecast and the Council of Economic Advisors.

It turns out that the forecast accuracy matches the chronology of the forecasts within the annual forecast semester. Moreover, a simple Monte Carlo study aims to illustrate graphically empirical size and empirical power of the tests for pairwise comparison depending on certain properties of the underlying forecast error sequences.

Details

Titel
Forecast Evaluation Methods
Untertitel
Introduction of selected modelfree methods to evaluate specific forecast series and to compare pairwise competing series of forecasts
Hochschule
Universität zu Köln  (Institut für Ökonometrie und Statistik)
Veranstaltung
Seminar "Statistics and Econometrics"
Note
1,0
Autor
Jahr
2016
Seiten
26
Katalognummer
V441425
ISBN (eBook)
9783668798533
ISBN (Buch)
9783668798540
Sprache
Englisch
Schlagworte
Forecast Evaluation, Diebold-Mariano, Prognose, Monte Carlo, Prognosegüte, Econometrics
Arbeit zitieren
Frank Undorf (Autor:in), 2016, Forecast Evaluation Methods, München, GRIN Verlag, https://www.grin.com/document/441425

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