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Table 3 Qualitative comparison between different missing data techniques in machine learning based on the performance metrics adopted

From: A survey on missing data in machine learning

Publication

Performance metrics

RMSE

MAE

MSE

AUC

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[127]

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[133]

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[139]

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[138]

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[140]

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[174]

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[156]

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[158]

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[170]

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[142]

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[141]

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