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question texts 9.63226E-4
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segmentation task 9.3851E-4
real texts 9.263329999999999E-4
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words 8.90818E-4
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automatic training 8.72302E-4
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separate language 8.54998E-4
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machine learning 7.89449E-4
large datasets 7.88796E-4
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model 7.85528E-4
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surface linguistic 7.53543E-4
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global discourse 7.47656E-4
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future work 7.22925E-4
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multiple regres 7.20012E-4
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regression analysis 7.11333E-4
whole set 7.1088E-4
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sentence 7.08916E-4
learning tools 7.060629999999999E-4
