A Boundary Regression Model for Nested Named Entity Recognition
Abstract
Recognizing named entities (NEs) is commonly conducted as a classification problem that predicts a class tag for a word or a NE candidate in a sentence. In shallow structures, categorized features are weighted to support the prediction. Recent developments in neural networks have adopted deep structures that map categorized features into continuous representations. This approach unfolds a dense space saturated with high-order abstract semantic information, where the prediction is based on distributed feature representations. In this paper, positions of NEs in a sentence are represented as continuous values. Then, a regression operation is introduced to regress boundaries of NEs in a sentence. Based on boundary regression, we design a boundary regression model to support nested NE recognition. It is a multiobjective learning framework, which simultaneously predicts the classification score of a NE candidate and refine its spatial location in a sentence. It has the advantage to resolve nested NEs and support boundary regression for locating NEs in a sntence. By sharing parameters for predicting and locating, this model enables more potent nonlinear function approximators to enhance model discriminability. Experiments demonstrate state-of-the-art performance for nested NE recognition\footnote{Our codes to implement the BR model are available at: \url{https://github.com/wuyuefei3/BR}.}.
Cite
@article{arxiv.2011.14330,
title = {A Boundary Regression Model for Nested Named Entity Recognition},
author = {Yanping Chen and Lefei Wu and Qinghua Zheng and Ruizhang Huang and Jun Liu and Liyuan Deng and Junhui Yu and Yongbin Qing and Bo Dong and Ping Chen},
journal= {arXiv preprint arXiv:2011.14330},
year = {2022}
}