Precursor-induced conditional random fields: connecting separate entities by induction for improved clinical named entity recognition.
Wangjin LeeJinwook ChoiPublished in: BMC medical informatics and decision making (2019)
The proposed precursor-induced CRF which uses non-entity labels as label transition information improves entity recognition F1 score by exploiting long-distance transition factors without exponentially increasing the computational time. In contrast, a conventional second-order CRF model that uses longer distance transition factors showed even worse results than the first-order model and required the longest computation time. Thus, the proposed model could offer a considerable performance improvement over current clinical named entity recognition methods based on the CRF models.