Temporal Fusion Strategies for NER in Historical Texts
This study investigates how temporal metadata can be structurally embedded into Named Entity Recognition (NER) models to address the challenge of entity drift in historical texts. The authors systematically evaluate lightweight fusion strategies, including cross-attention, adapters, and concatenation, within Transformer-based architectures.