“…In a few instances of regression tasks 9 [ 27 , 112 , 122 , 128 , 155 , 193 ], metrics of mean error (e.g., MSE, MAE, RMSE, SMAPE) were applied [ 50 , 62 , 112 , 155 , 179 ] to reveal any unexpected values, sensitivities towards outliers, and risks of over-or underestimating false predictions [ 51 ]. Individual works also applied more specific metrics to evaluate multi-dimensional classification (i.e., using Hamming score, Hamming Loss, Exact-match [ 136 ]); or the confidence [ 139 ], coherence [ 64 ], and completeness [ 45 ] of clustering outcomes (e.g . , using WCSS, Dunn Index, DB Index, or Silhouette Index to assess similarity within, and separation between, clusters [ 179 ]).…”