Recently, researchers have applied the word-character lattice framework to integrated word information, which has become very popular for Chinese named entity recognition (NER). However, prior approaches fuse word information by different variants of encoders such as Lattice LSTM or Flat-Lattice Transformer, but are still not data-efficient indeed to fully grasp the depth interaction of cross-granularity and important word information from the lexicon. In this paper, we go beyond the typical lattice structure and propose a novel Multi-Granularity Contrastive Learning framework (MCL), that aims to optimize the inter-granularity distribution distance and emphasize the critical matched words in the lexicon. By carefully combining cross-...
The Chinese named entity recognition (NER) is a critical task in natural language processing, aiming...
This paper presents a Chinese named entity recognizer (NER): Mencius. It aims to address Chinese NER...
So far, named entity recognition (NER) has been involved with three major types, including flat, ove...
Word-character lattice models have been proved to be effective for Chinese named entity recognition ...
Named Entity Recognition (NER) is an essential part of many natural language processing (NLP) tasks....
Named entity recognition (NER) is a typical sequential labeling problem that plays an important role...
In this paper, we investigate how to improve Chinese named entity recognition (NER) by jointly model...
The Chinese NER task consists of two steps, first determining entity boundaries and then labeling th...
The performance of Chinese-named entity recognition (NER) has improved via word enhancement or new f...
Named entity recognition (NER) is a subtask in natural language processing, and its accuracy greatly...
Recently, word enhancement has become very popular for Chinese Named Entity Recognition (NER), reduc...
We present the first known result for named entity recognition (NER) in realistic largevocabulary sp...
To quickly obtain new labeled data, we can choose crowdsourcing as an alternative way at lower cost ...
Named Entity Recognition is one of the key techniques in the fields of natural language processing, ...
Due to the lack of natural delimiters, most Chinese Named Entity Recognition (NER) approaches are ch...
The Chinese named entity recognition (NER) is a critical task in natural language processing, aiming...
This paper presents a Chinese named entity recognizer (NER): Mencius. It aims to address Chinese NER...
So far, named entity recognition (NER) has been involved with three major types, including flat, ove...
Word-character lattice models have been proved to be effective for Chinese named entity recognition ...
Named Entity Recognition (NER) is an essential part of many natural language processing (NLP) tasks....
Named entity recognition (NER) is a typical sequential labeling problem that plays an important role...
In this paper, we investigate how to improve Chinese named entity recognition (NER) by jointly model...
The Chinese NER task consists of two steps, first determining entity boundaries and then labeling th...
The performance of Chinese-named entity recognition (NER) has improved via word enhancement or new f...
Named entity recognition (NER) is a subtask in natural language processing, and its accuracy greatly...
Recently, word enhancement has become very popular for Chinese Named Entity Recognition (NER), reduc...
We present the first known result for named entity recognition (NER) in realistic largevocabulary sp...
To quickly obtain new labeled data, we can choose crowdsourcing as an alternative way at lower cost ...
Named Entity Recognition is one of the key techniques in the fields of natural language processing, ...
Due to the lack of natural delimiters, most Chinese Named Entity Recognition (NER) approaches are ch...
The Chinese named entity recognition (NER) is a critical task in natural language processing, aiming...
This paper presents a Chinese named entity recognizer (NER): Mencius. It aims to address Chinese NER...
So far, named entity recognition (NER) has been involved with three major types, including flat, ove...