{ "architecture": "gin", "seed": 42, "best_val_mcc": 0.5609368123898547, "val_metrics": { "mcc": 0.5609368123898547, "accuracy": 0.7771431385100201, "balanced_accuracy": 0.7748098221414874, "precision": 0.7410443478973686, "recall": 0.8686461035841261, "f1": 0.7997876669910643, "roc_auc": 0.8413672351687064, "pr_auc": 0.8093612949314712 }, "test_metrics": { "mcc": 0.5641958688616364, "accuracy": 0.7782756413412772, "balanced_accuracy": 0.775832009081207, "precision": 0.7400178905424087, "recall": 0.874495483374976, "f1": 0.8016561687882658, "roc_auc": 0.8417462134967497, "pr_auc": 0.8087144857201518 }, "confusion_matrix": { "counts": [ [ 6706, 3197 ], [ 1306, 9100 ] ], "normalised": [ [ 0.6771685347874381, 0.32283146521256184 ], [ 0.12550451662502402, 0.874495483374976 ] ], "counts_path": "runs/gin_seed42/test_confusion_counts.csv", "normalised_path": "runs/gin_seed42/test_confusion_normalised.csv", "figure_path": "runs/gin_seed42/test_confusion_matrix.png" }, "classification_report": " precision recall f1-score support\n\n 0 0.8370 0.6772 0.7486 9903\n 1 0.7400 0.8745 0.8017 10406\n\n accuracy 0.7783 20309\n macro avg 0.7885 0.7758 0.7752 20309\nweighted avg 0.7873 0.7783 0.7758 20309\n" }