Contrastive Analysis And Error Analysis
animal learning not human learning. 2) In the learning of a second language, the native language of the student does not really" interfere" with his learning, but it plays as an " escape hatch" when the learner gets into trouble. 3This view point suggests that what will be most difficult for the learner is his
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