Named entity recognition is not only the first step of text information extraction, but also the key process of constructing domain knowledge graphs. In view of the large amount of text data, complex process flow and urgent application needs in the hot strip rolling process, a novel named entity recognition algorithm based on BERT-Imseq2seq-CRF model is proposed in this paper. Firstly, the algorithm uses the BERT preprocessing language model to mine the dependencies in the domain text and obtain the corresponding representation vector. Then, the representation vector is sent to the encoder layer, and the output vector is input to the decoder at the same time, on the premise that the original model only considers the semantic vector. The Tea...
The medical literature contains valuable knowledge, such as the clinical symptoms, diagnosis, and tr...
Named entity recognition can deeply explore semantic features and enhance the ability of vector repr...
Because of difficulty processing the electronic medical record data of patients with cerebrovascular...
Named entity recognition is an important stage in the construction of knowledge graph. Based on the ...
In the early named entity recognition models, most text processing focused only on the representatio...
Weaponry equipment names belong to an important military naming entity that is difficult to identify...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
In order to integrate fragmented text data of crop disease knowledge to solve the current problems o...
Automatically extracting key data from annual reports is an important means of business assessments....
Nowadays, most deep learning models ignore Chinese habits and global information when processing Chi...
International audienceWithin Information Extraction tasks, Named Entity Recognition has received muc...
Named Entity Recognition (NER) is one key step for constructing power domain knowledge graph which i...
With the development of smart agriculture, automatic question and answer (Q&A) of agricultural knowl...
Machine Learning is described in today’s Information Technology world as one of the most promising r...
The medical literature contains valuable knowledge, such as the clinical symptoms, diagnosis, and tr...
Named entity recognition can deeply explore semantic features and enhance the ability of vector repr...
Because of difficulty processing the electronic medical record data of patients with cerebrovascular...
Named entity recognition is an important stage in the construction of knowledge graph. Based on the ...
In the early named entity recognition models, most text processing focused only on the representatio...
Weaponry equipment names belong to an important military naming entity that is difficult to identify...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
In order to integrate fragmented text data of crop disease knowledge to solve the current problems o...
Automatically extracting key data from annual reports is an important means of business assessments....
Nowadays, most deep learning models ignore Chinese habits and global information when processing Chi...
International audienceWithin Information Extraction tasks, Named Entity Recognition has received muc...
Named Entity Recognition (NER) is one key step for constructing power domain knowledge graph which i...
With the development of smart agriculture, automatic question and answer (Q&A) of agricultural knowl...
Machine Learning is described in today’s Information Technology world as one of the most promising r...
The medical literature contains valuable knowledge, such as the clinical symptoms, diagnosis, and tr...
Named entity recognition can deeply explore semantic features and enhance the ability of vector repr...
Because of difficulty processing the electronic medical record data of patients with cerebrovascular...