{ "description": "DistilBERT-based 3-class classifier for clinical text, distinguishing between RISK: HIGH, RISK: LOW, and ATTACK: DETECTED.", "model_name": "Robust-Clinical-Risk-Detector", "pipeline_tag": "text-classification", "tags": [ "distilbert", "healthcare", "clinical-nlp", "risk-assessment", "adversarial-robustness", "pytorch" ], "datasets": [ "Health/perturbed_ehr_notes" ], "metrics": [ { "name": "Clean Accuracy", "type": "accuracy", "value": 0.956 }, { "name": "Adversarial Robustness (A-ACC)", "type": "attack_accuracy", "value": 0.781 } ] }