- A more comprehensive policy for combating trafficking in human beings is therefore taking shape.
- En mer heltäckande politik för att bekämpa människohandeln håller därför på att utformas.
- How can we combat trafficking if there is no cooperation between Member States?
- Hur skall vi kunna bekämpa människohandeln om medlemsstaterna inte samarbetar?
- We feel that the European Parliament must play a central role and that its commitment is very important in terms of further strengthening the European legal framework of measures to combat trafficking in human beings.
- Vi anser att Europaparlamentet måste spela en central roll och att dess engagemang är mycket viktigt när det gäller att ytterligare stärka den europeiska rättsliga ramen av åtgärder för att bekämpa människohandeln.
- The important part, of course, is ’especially women and children’ and today we have Amendment No 1 in the report by Mrs Klamt, whom I would like to thank, which expressly states that we want to combat trafficking in human beings for the purpose of sexual exploitation and labour exploitation.
- I förslaget sägs uttryckligen att vi vill bekämpa människohandel som syftar till sexuellt utnyttjande och exploatering av arbetskraft.
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SET search_path TO f9miniensv;
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r1.dep_id AS dep1,
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sentence_id IN (
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