There are a large number of symptom consultation texts in medical and healthcare Internet communities, and Chinese health segmentation is more complex, which leads to the low accuracy of the existing algorithms for medical text classification. The deep learning model has advantages in extracting abstract features of text effectively. However, for a large number of samples of complex text data, especially for words with ambiguous meanings in the field of Chinese medical diagnosis, the word-level neural network model is insufficient. Therefore, in order to solve the triage and precise treatment of patients, we present an improved Double Channel (DC) mechanism as a significant enhancement to Long Short-Term Memory (LSTM). In this DC mechanism,...
As a task requiring strong professional experience as supports, predictive biomedical intelligence c...
As a task requiring strong professional experience as supports, predictive biomedical intelligence c...
The emergence of deep learning algorithms in natural language processing has boosted the development...
There are a large number of symptom consultation texts in medical and healthcare Internet communitie...
Text classification is of importance in natural language processing, as the massive text information...
Background Discharge medical notes written by physicians contain important information about the hea...
The main objective of this work is to improve the quality and transparency of the medical text class...
The main objective of this work is to improve the quality and transparency of the medical text class...
Abstract Background Clinical entity recognition as a fundamental task of clinical text processing ha...
In recent years, the application of deep learning methods has become increasingly popular, especiall...
How to leverage insights into big electronic health records (EHRs) becomes increasingly important fo...
The LSTM neural network was first proposed in 1997 to address the weakness of long-term RNN dependen...
While Transformer language models (LMs) are state-of-the-art for information extraction, long text i...
Sentiment classification plays a pivotal role in natural language processing (NLP), and prior resear...
In the classification of traditional algorithms, problems of high features dimension and data sparse...
As a task requiring strong professional experience as supports, predictive biomedical intelligence c...
As a task requiring strong professional experience as supports, predictive biomedical intelligence c...
The emergence of deep learning algorithms in natural language processing has boosted the development...
There are a large number of symptom consultation texts in medical and healthcare Internet communitie...
Text classification is of importance in natural language processing, as the massive text information...
Background Discharge medical notes written by physicians contain important information about the hea...
The main objective of this work is to improve the quality and transparency of the medical text class...
The main objective of this work is to improve the quality and transparency of the medical text class...
Abstract Background Clinical entity recognition as a fundamental task of clinical text processing ha...
In recent years, the application of deep learning methods has become increasingly popular, especiall...
How to leverage insights into big electronic health records (EHRs) becomes increasingly important fo...
The LSTM neural network was first proposed in 1997 to address the weakness of long-term RNN dependen...
While Transformer language models (LMs) are state-of-the-art for information extraction, long text i...
Sentiment classification plays a pivotal role in natural language processing (NLP), and prior resear...
In the classification of traditional algorithms, problems of high features dimension and data sparse...
As a task requiring strong professional experience as supports, predictive biomedical intelligence c...
As a task requiring strong professional experience as supports, predictive biomedical intelligence c...
The emergence of deep learning algorithms in natural language processing has boosted the development...