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, C': 0.83617364781543058, 'penalty': 'l2'. ? Fold 3: 'C': 0.078134513655501683, 'penalty': 'l2, ? with the logistic regression algorithm (LR) uses the following parameters: ? Fold 1: 'C': 0.056049240151690681, 'penalty': 'l2'. ? Fold, vol.2