Application of the nowcast method for the estimation of the Republic Moldova macroeconomic aggregates
Închide
Articolul precedent
Articolul urmator
460 4
Ultima descărcare din IBN:
2023-04-25 21:04
SM ISO690:2012
CARA, Elena, BLANUȚA, Victoria. Aplicarea metodei nowcast pentru estimarea agregatelor macroeconomice ale Republicii Moldova. In: Competitivitatea şi inovarea în economia cunoaşterii: Culegere de rezumate, 25-26 septembrie 2020, Chişinău. Chişinău Republica Moldova: Departamentul Editorial-Poligrafic al ASEM, 2020, Ediţia a 22-a, pp. 44-47. ISBN 978-9975-75-986-1.
EXPORT metadate:
Google Scholar
Crossref
CERIF

DataCite
Dublin Core
Competitivitatea şi inovarea în economia cunoaşterii
Ediţia a 22-a, 2020
Conferința "Competitivitate şi inovare în economia cunoaşterii"
Chişinău, Moldova, 25-26 septembrie 2020

Application of the nowcast method for the estimation of the Republic Moldova macroeconomic aggregates

Aplicarea metodei nowcast pentru estimarea agregatelor macroeconomice ale Republicii Moldova

JEL: E6, L83, K38

Pag. 44-47

Cara Elena, Blanuța Victoria
 
Academia de Studii Economice din Moldova
 
 
Disponibil în IBN: 8 decembrie 2020


Rezumat

The assessment of the current economic situation in real time is neccesary for policymakers to take prompt, appropriate and immediate impact measures. An acceptable tool for this purpose is the ”Nowcast” method – a modern macroeconometric approach with high performance. The selected model for the ”Nowcast” estimation provides the following: the common factors estimation capturing a big number of high frequency indicators and macroeconomic aggregates growth estimation using the estimated factors within a standard regressional framework. The ”Nowcast” economic growth estimation in real time has already proved its utility for the national economic situation assessment before the macroeconomic statistical data are made available, especially in times of economic crisis.

Cuvinte-cheie
bridge equations, factor model, nowcast, gross domestic product, short-term forecast