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Monitoring and forecasting annual public deficit every month: the case of France

Bibliographic reference Silvestrini, Andrea ; Salto, Matteo ; Moulin, Laurent ; Veredas, David. Monitoring and forecasting annual public deficit every month: the case of France. In: Empirical Economics : a quarterly journal of the Institute for Advanced Studies, Vienna, Vol. 34, no. 3, p. 493-524 (2008)
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