In this paper, we approach the multilingual text classification task in the context of the epidemiological field. Multilingual text classification models tend to perform differently across different languages (low- or high-resource), more particularly when the dataset is highly imbalanced, which is the case for epidemiological datasets. We conduct a comparative study of different machine and deep learning text classification models using a dataset comprising news articles related to epidemic outbreaks from six languages, four low-resourced and two high-resourced, in order to analyze the influence of the nature of the language, the structure of the document, and the size of the data. Our findings indicate that the performance of the models b...
International audienceThis study aims at developing a news surveillance system able to address multi...
Statements on social media can be analysed to identify individuals who are experiencing red flag med...
In this paper, we present a dataset and a baseline evaluation for multilingual epidemic event extrac...
In this paper, we approach the multilingual text classification task in the context of the epidemiol...
International audienceObjective : This paper presents a multilingual news surveillance system applie...
In this paper, we focus on epidemic event extraction in multilingual and low-resource settings. The ...
International audienceThe early detection of disease outbursts is an important ob-jective of epidemi...
This paper proposes a corpus for development and evaluation of tools and techniques for identifying ...
International audienceIn this paper, we introduce a multilingual epidemiological news surveillance s...
Abstract Twitter and social media as a whole have great potential as a source of disease surveillanc...
International audienceThis paper presents the Multilingual COVID-19 Analysis Method (CMTA) for detec...
In the context of an epidemiological study involving multilingual social media, this paper reports o...
We introduce a multi-label text classifier with per-label attention for the classification of Electr...
International audienceWe present EpidBioBERT, a biosurveillance epidemiological document tagger for ...
International audienceThis study aims at developing a news surveillance system able to address multi...
International audienceThis study aims at developing a news surveillance system able to address multi...
Statements on social media can be analysed to identify individuals who are experiencing red flag med...
In this paper, we present a dataset and a baseline evaluation for multilingual epidemic event extrac...
In this paper, we approach the multilingual text classification task in the context of the epidemiol...
International audienceObjective : This paper presents a multilingual news surveillance system applie...
In this paper, we focus on epidemic event extraction in multilingual and low-resource settings. The ...
International audienceThe early detection of disease outbursts is an important ob-jective of epidemi...
This paper proposes a corpus for development and evaluation of tools and techniques for identifying ...
International audienceIn this paper, we introduce a multilingual epidemiological news surveillance s...
Abstract Twitter and social media as a whole have great potential as a source of disease surveillanc...
International audienceThis paper presents the Multilingual COVID-19 Analysis Method (CMTA) for detec...
In the context of an epidemiological study involving multilingual social media, this paper reports o...
We introduce a multi-label text classifier with per-label attention for the classification of Electr...
International audienceWe present EpidBioBERT, a biosurveillance epidemiological document tagger for ...
International audienceThis study aims at developing a news surveillance system able to address multi...
International audienceThis study aims at developing a news surveillance system able to address multi...
Statements on social media can be analysed to identify individuals who are experiencing red flag med...
In this paper, we present a dataset and a baseline evaluation for multilingual epidemic event extrac...