2022
DOI: 10.1016/j.artmed.2022.102264
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FlauBERT vs. CamemBERT: Understanding patient's answers by a French medical chatbot

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Cited by 16 publications
(8 citation statements)
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“…The objective was to perform unsupervised learning, while we focused on supervised learning. Blanc et al [ 27 ] compared the performances of CamemBERT and FlauBERT to build a chatbot, and Sauvayre et al [ 28 ] used CamemBERT to classify the opinion of Twitter users on COVID-19 vaccines. The BERT language model is therefore usable for the French language and could be adapted for the classification of tweets.…”
Section: Introductionmentioning
confidence: 99%
“…The objective was to perform unsupervised learning, while we focused on supervised learning. Blanc et al [ 27 ] compared the performances of CamemBERT and FlauBERT to build a chatbot, and Sauvayre et al [ 28 ] used CamemBERT to classify the opinion of Twitter users on COVID-19 vaccines. The BERT language model is therefore usable for the French language and could be adapted for the classification of tweets.…”
Section: Introductionmentioning
confidence: 99%
“…Luo et al 48 developed the BioGPT language model, a domain-specific generative Transformer that was trained on a large volume of biological literature and tested on six biomedical natural language processing tasks. Blanc et al 49 used FlauBERT and CamemBERT to design a study to ascertain which language model and neural network architecture combination was best for intent and slot prediction by a chatbot using a French corpora of clinical cases.…”
Section: Related Workmentioning
confidence: 99%
“…Nevertheless, the trends observed within this set of keywords are also reflected in the analysis provided in the following sections. [23], construction of cohorts of similar patients [24], processing of electronic medical records [25], understanding of patient's answers in a French medical chatbot [26]; • German: evaluation of Transformers on clinical notes [27]; • Greek: improving the performance of localized healthcare virtual assistants [28]; • Hindi: classification of COVID-19 texts [29], chatbot for information sexual and reproductive health for young people [30]; • Italian: analysis of social media for quality of life in Parkinson's patients [31], sentiment analysis of opinion on COVID-19 vaccines [32,33], estimation of the incidence of infectious disease cases [34]; • Japanese: understanding psychiatric illness [35], detection of adverse events from narrative clinical documents [36]; • Korean: BERT model for processing med-ical documents [37], sentiment analysis of tweets about COVID-19 vaccines [38];…”
Section: Analysis Of Abstract From Publicationsmentioning
confidence: 99%