Evaluating FrameNet-Based Semantic Modeling for Gender-Based Violence Detection in Clinical Records
arXiv cs.CL / 3/20/2026
💬 OpinionSignals & Early TrendsModels & Research
Key Points
- FrameNet-based semantic annotation of open-text fields in electronic medical records can improve the identification of GBV patterns compared with purely categorical models.
- The study assesses three setups: frame-annotated text, frame-annotated text with parameterized data, and parameterized data alone, finding semantic-annotation variants outperform the baseline.
- The models incorporating semantic annotation achieve over a 0.3 improvement in F1 score, indicating domain-specific semantic representations provide meaningful signals beyond structured data.
- The results suggest semantic analysis of clinical narratives can enhance early GBV identification and support more informed public health interventions, with implications for data integration in healthcare systems.
- The work demonstrates the value of linguistic-semantic approaches in clinical NLP for public health surveillance.
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