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Inicio  /  Sustainability  /  Vol: 7 Núm: 3 Par: March (2015)  /  Artículo
ARTÍCULO
TITULO

Estimating Potential GDP for the Romanian Economy and Assessing the Sustainability of Economic Growth: A Multivariate Filter Approach

Dan Armeanu    
Georgiana Camelia Cre?an    
Leonard Lache and Mihaela Mitroi    

Resumen

In the current context of economic recovery and rebalancing, the necessity of modelling and estimating the potential output and output gap emerges in order to assess the quality and sustainability of economic growth, the monetary and fiscal policies, as well as the impact of business cycles. Despite the importance of potential GDP and the output gap, there are difficulties in reliably estimating them, as many of the models proposed in the economic literature are calibrated for developed economies and are based on complex macroeconomic relationships and a long history of robust data, while emerging economies exhibit high volatility. The object of this study is to develop a model in order to estimate the potential GDP and output gap and to assess the sustainability of projected growth using a multivariate filter approach. This trend estimation technique is the newest approach proposed by the economic literature and has gained wide acceptance with researchers and practitioners alike, while also being used by the IMF for Romania. The paper will be structured as follows. We first discuss the theoretical background of the model. The second section focuses on an analysis of the Romanian economy for the 1995?2013 time frame, while also providing a forecast for 2014?2017 and an assessment of the sustainability of Romania?s economic growth. The third section sums up the results and concludes.

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