International audienceText representation is a fundamental cornerstone that impacts the effectiveness of several text summarization methods. Transfer learning using pre-trained word embedding models has shown promising results. However, most of these representations do not consider the order and the semantic relationships between words in a sentence, and thus they do not carry the meaning of a full sentence. To overcome this issue, the current study proposes an unsupervised method for extractive multi-document summarization based on transfer learning from BERT sentence embedding model. Moreover, to improve sentence representation learning, we fine-tune BERT model on supervised intermediate tasks from GLUE benchmark datasets using single-tas...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
Recent studies of extractive text summarization have leveraged BERT for document encoding with break...
Obtaining large-scale and high-quality training data for multi-document summarization (MDS) tasks is...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
The task of summarization can be categorized into two methods, extractive and abstractive. Extractiv...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
Text summarization is the process of employing a system to shorten a document or a collection of doc...
Publicly available data grows exponentially through web services and technological advancements. To ...
Publicly available data grows exponentially through web services and technological advancements. To ...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
Publicly available data grows exponentially through web services and technological advancements. To ...
Extractive text summarization involves selecting and combining key sentences directly from the origi...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
Recent studies of extractive text summarization have leveraged BERT for document encoding with break...
Obtaining large-scale and high-quality training data for multi-document summarization (MDS) tasks is...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
The task of summarization can be categorized into two methods, extractive and abstractive. Extractiv...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
Text summarization is the process of employing a system to shorten a document or a collection of doc...
Publicly available data grows exponentially through web services and technological advancements. To ...
Publicly available data grows exponentially through web services and technological advancements. To ...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
Publicly available data grows exponentially through web services and technological advancements. To ...
Extractive text summarization involves selecting and combining key sentences directly from the origi...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
BERT has attained state-of-the-art performance for extractive overview tasks on the CNN/Daily-Mail d...
Recent studies of extractive text summarization have leveraged BERT for document encoding with break...