A Span-Based Distantly Supervised NER with Self-learning

The lack of labeled data is one of the major obstacles for named entity recognition (NER). Distant supervision is often used to alleviate this problem, which automatically generates annotated training datasets by dictionaries. However, as far as we know, existing distant supervision based methods do not consider the latent entities which are not in dictionaries. Intuitively, entities of the same type have the similar contextualized feature, we can use the feature to extract the latent entities within corpuses into corresponding dictionaries to improve the performance of distant supervision based methods. Thus, in this paper, we propose a novel span-based self-learning method, which employs span-level features to update corresponding dictionaries. Specifically, the proposed method directly takes all possible spans into account and scores them for each label, then picks latent entities from candidate spans into corresponding dictionaries based on both local and global features. Extensive experiments on two public datasets show that our proposed method performs better than the state-of-the-art baselines.

[1]  Dan Klein,et al.  A Minimal Span-Based Neural Constituency Parser , 2017, ACL.

[2]  Wenqi He Autoentity: automated entity detection from massive text corpora , 2017 .

[3]  Dan Klein,et al.  Constituency Parsing with a Self-Attentive Encoder , 2018, ACL.

[4]  Eduard H. Hovy,et al.  End-to-end Sequence Labeling via Bi-directional LSTM-CNNs-CRF , 2016, ACL.

[5]  Daniel Jurafsky,et al.  Distant supervision for relation extraction without labeled data , 2009, ACL.

[6]  Isabelle Augenstein,et al.  Relation Extraction from the Web Using Distant Supervision , 2014, EKAW.

[7]  Roland Vollgraf,et al.  Contextual String Embeddings for Sequence Labeling , 2018, COLING.

[8]  Michael Collins,et al.  Efficient Third-Order Dependency Parsers , 2010, ACL.

[9]  Guillaume Lample,et al.  Neural Architectures for Named Entity Recognition , 2016, NAACL.

[10]  Dan Roth,et al.  A Constrained Latent Variable Model for Coreference Resolution , 2013, EMNLP.

[11]  Kuldip K. Paliwal,et al.  Bidirectional recurrent neural networks , 1997, IEEE Trans. Signal Process..

[12]  Farhad Nooralahzadeh,et al.  Reinforcement-based denoising of distantly supervised NER with partial annotation , 2019, EMNLP.

[13]  Jiwei Li,et al.  CorefQA: Coreference Resolution as Query-based Span Prediction , 2020, ACL.

[14]  Baobao Chang,et al.  Graph-based Dependency Parsing with Bidirectional LSTM , 2016, ACL.

[15]  Dan Roth,et al.  Design Challenges and Misconceptions in Named Entity Recognition , 2009, CoNLL.

[16]  Min Zhang,et al.  Distantly Supervised NER with Partial Annotation Learning and Reinforcement Learning , 2018, COLING.

[17]  Xiang Zhao,et al.  HAMNER: Headword Amplified Multi-span Distantly Supervised Method for Domain Specific Named Entity Recognition , 2019, AAAI.

[18]  Andrew McCallum,et al.  Lexicon Infused Phrase Embeddings for Named Entity Resolution , 2014, CoNLL.

[19]  Claudiu Musat,et al.  Unsupervised Aspect Term Extraction with B-LSTM & CRF using Automatically Labelled Datasets , 2017, WASSA@EMNLP.

[20]  Hiroyuki Shindo,et al.  A Span Selection Model for Semantic Role Labeling , 2018, EMNLP.

[21]  Teng Ren,et al.  Learning Named Entity Tagger using Domain-Specific Dictionary , 2018, EMNLP.

[22]  Ming-Wei Chang,et al.  BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding , 2019, NAACL.