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A Study of Temporal Fusion Strategies for Named Entity Recognition in Historical Texts
arXiv:2606.27881v1 Announce Type: new Abstract: Temporal variation poses a unique challenge for named entity recognition (NER) in historical texts, where entities drift in surface form and salience across time. While language models (LMs) have made progress in various NLP tasks, their ability to reason about temporality, especially in diachronic contexts, remains limited or at least, questionable. In this paper, we systematically study how temporal metadata can be structurally embedded into NER ...
arXiv cs.CL
·Emanuela Boros
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