feat: MLX 임계값 탐색을 정밀도 우선(recall>=0.15 조건부)으로 변경
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@@ -118,8 +118,26 @@ def train_mlx(data_path: str, time_weight_decay: float = 2.0) -> float:
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val_proba = model.predict_proba(X_val)
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auc = roc_auc_score(y_val, val_proba)
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print(f"\n검증 AUC: {auc:.4f}")
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print(classification_report(y_val, (val_proba >= 0.60).astype(int)))
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# 최적 임계값 탐색: 최소 재현율(0.15) 조건부 정밀도 최대화
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from sklearn.metrics import precision_recall_curve
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precisions, recalls, thresholds = precision_recall_curve(y_val, val_proba)
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precisions, recalls = precisions[:-1], recalls[:-1]
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MIN_RECALL = 0.15
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valid_idx = np.where(recalls >= MIN_RECALL)[0]
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if len(valid_idx) > 0:
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best_idx = valid_idx[np.argmax(precisions[valid_idx])]
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best_thr = float(thresholds[best_idx])
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best_prec = float(precisions[best_idx])
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best_rec = float(recalls[best_idx])
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else:
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best_thr, best_prec, best_rec = 0.50, 0.0, 0.0
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print(f" [경고] recall >= {MIN_RECALL} 조건 만족 임계값 없음 → 기본값 0.50 사용")
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print(f"\n검증 AUC: {auc:.4f} | 최적 임계값: {best_thr:.4f} "
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f"(Precision={best_prec:.3f}, Recall={best_rec:.3f})")
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print(classification_report(y_val, (val_proba >= best_thr).astype(int), zero_division=0))
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MLX_MODEL_PATH.parent.mkdir(exist_ok=True)
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model.save(MLX_MODEL_PATH)
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@@ -133,6 +151,9 @@ def train_mlx(data_path: str, time_weight_decay: float = 2.0) -> float:
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"date": datetime.now().isoformat(),
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"backend": "mlx",
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"auc": round(auc, 4),
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"best_threshold": round(best_thr, 4),
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"best_precision": round(best_prec, 3),
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"best_recall": round(best_rec, 3),
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"samples": len(dataset),
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"train_sec": round(t3 - t2, 1),
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"time_weight_decay": time_weight_decay,
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