- EU measures to combat unemployment
- EU:s åtgärder för att bekämpa arbetslösheten
- Employment statistics are certainly extremely important in combating unemployment.
- Arbetsmarknadsstatistiken är i själva verket mycket viktig för att bekämpa arbetslösheten.
- It is a fact that the criteria for EMU should have included criteria for combating unemployment in the Member States.
- Det är ett faktum att EMU-kriterierna borde ha innefattat kriterier för att bekämpa arbetslösheten i medlemsstaterna.
- Therefore, today, as we prepare for this G20, the only motto and the only objective that we can share is that of combating unemployment.
- I dag när vi förbereder oss inför G20-mötet är det enda motto och det enda mål som vi alla kan dela därför att bekämpa arbetslösheten.
- Nonetheless, in order to combat unemployment in the Member States, European governments need to learn from each other, coordinate their approaches and exchange best practices.
- För att bekämpa arbetslösheten i medlemsstaterna måste de europeiska regeringarna dock lära av varandra, samordna sina strategier och utbyta bästa praxis.
- What happens, however, when a Member State such as Greece, where unemployment has risen from 6.3% to 11.1% in the ten years between 1990 and 2000, has had the same recommendations on combating unemployment since 1998?
- Men vad händer när en medlemsstat som Grekland, där arbetslösheten har stigit från 6,3 procent till 11,1 procent under de tio åren mellan 1990 och 2000, har haft samma rekommendationer för att bekämpa arbetslösheten sedan 1998?
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