- Thirdly, oversight should be provided for economic forecasts which have been a cause of unnecessary and misleading public financial projections.
- För det tredje måste de ekonomiska prognoser som gett upphov till onödiga och vilseledande offentliga finansiella prognoser kontrolleras.
- The forecasts for 2008 and beyond, as you know, will have to wait until we publish our economic forecasts in November, as usual.
- Prognoserna för 2008 och därefter måste, som ni vet, i vanlig ordning vänta tills vi offentliggör våra ekonomiska prognoser i november.
- In short, ladies and gentlemen, there is no doubt that, given that one of the risks of decline which we had been warning about for some time when we published our economic forecasts - risks of a decline in the US mortgage market and its impact on the US economy - has materialised, growth this year and next year in the European Union and in the euro area is not going to exceed our forecasts given in May this year.
- Kort sagt står det klart att årets och nästa års tillväxt i EU och euroområdet inte kommer att överstiga våra prognoser från maj i år, med tanke på att en av de risker för en tillbakagång som vi sedan en tid varnat för när vi offentliggjorde våra ekonomiska prognoser har förverkligats, nämligen risken för en nedgång på den amerikanska bolånemarknaden och dess konsekvenser för USA:s ekonomi.
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