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Table 2 Comparison of the prediction performance of the ELMDA framework and a single classifier

From: Prediction of disease-related miRNAs by voting with multiple classifiers

Fold

Precision

Recall

F1-score

AUC

AUPR

SVM

0.8369 ± 0.0085

0.8371 ± 0.0143

0.8370 ± 0.0075

0.9091 ± 0.0031

0.9057 ± 0.0036

GBDT

0.8369 ± 0.0107

0.8490 ± 0.0057

0.8429 ± 0.0054

0.9172 ± 0.0034

0.9138 ± 0.0039

RF

0.8424 ± 0.0108

0.8354 ± 0.0131

0.8388 ± 0.0091

0.9141 ± 0.0049

0.9123 ± 0.0047

XGboost

0.8471 ± 0.0090

0.8486 ± 0.0099

0.8478 ± 0.0076

0.9191 ± 0.0039

0.9165 ± 0.0045

ELMDA

0.8485 ± 0.0139

0.8536 ± 0.0101

0.8510 ± 0.0094

0.9229 ± 0.0035

0.9217 ± 0.0031