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test sets 9.387919999999999E-4
possible predictor 9.32801E-4
same subset 9.252730000000001E-4
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overall accuracy 9.16801E-4
evaluative approach 9.159190000000001E-4
testing set 9.10439E-4
training 9.03179E-4
same property 8.980660000000001E-4
orientation links 8.950939999999999E-4
possible orientations 8.911100000000001E-4
orientation label 8.85626E-4
