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Post-editing neural machine translation versus translation memory segments

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Academic year: 2021

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Figure

Figure 5. Distribution of values expressing time spent editing MT vs. TM segments
Figure 7. Distribution of edit distance values for MT vs. TM segments of under 10 words (1 st  chart), from 10 to 19  words (2 nd  chart), and of over 20 words (3 rd  chart)
Figure 11. Distribution of edited character values for MT vs. TM segments of under 10 words (1 st  chart), from 10 to  19 words (2 nd  chart), and of over 20 words (3 rd  chart)
Figure 12. Distribution of edited character values for MT segments vs. segments with TM fuzzy matches of under  80% (1 st  chart), from 80% to 90% (2 nd  chart) and of over 90% (3 rd  chart)
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