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A Fluctuation Smoothing Approach for Unsupervised Automatic Short Answer Grading

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Figure

Figure 2: Aggregate Cohen’s κfor CSD.
Figure 3: Fluctuation in Pearson’rof unsupervised ASAG techniques. It can be seen that unsuper-vised ASAG techniques with proposed fluctuation smoothing (blue solid lines) are significantly flatterthan without smoothing (red dotted lines)

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