International audienceExtractive summarization consists of generating a summary by ranking sentences from the original texts according to their importance and salience. Text representation is a fundamental process that affects the effectiveness of many text summarization methods. Distributed word vector representations have been shown to improve Natural Language Processing (NLP) tasks, especially Automatic Text Summariza-tion (ATS). However, most of them do not consider the order and the context of the words in a sentence. This does not fully allow grasping the sentence semantics and the syntactic relationships between sentences constituents. In this paper, to overcome this problem, we propose a deep neural network model based-method for ex...
The need for text summarization is crucial as we enter the era of information overload. In this pape...
Over the past two decades, with the advancements in the World Wide Web and Internet, there has been ...
The number of electronic documents as a media of business and academic information has increased tre...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
This dissertation provides a new method for sentence embedding and document summarization. The topic...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Obtaining large-scale and high-quality training data for multi-document summarization (MDS) tasks is...
Automatic text summarization is a mechanism for converting longer text into smaller text while retai...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Automated multi-document extractive text summarization is a widely studied research problem in the f...
Recently, there is a lot of information available on the Internet, which makes it difficult for user...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...
This project aims at applying neural network-based deep learning to the problem of extractive text s...
International audienceText representation is a fundamental cornerstone that impacts the effectivenes...
The need for text summarization is crucial as we enter the era of information overload. In this pape...
Over the past two decades, with the advancements in the World Wide Web and Internet, there has been ...
The number of electronic documents as a media of business and academic information has increased tre...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
This dissertation provides a new method for sentence embedding and document summarization. The topic...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Obtaining large-scale and high-quality training data for multi-document summarization (MDS) tasks is...
Automatic text summarization is a mechanism for converting longer text into smaller text while retai...
With the Internet becoming widespread, countless articles and multimedia content have been filled in...
Automated multi-document extractive text summarization is a widely studied research problem in the f...
Recently, there is a lot of information available on the Internet, which makes it difficult for user...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...
This project aims at applying neural network-based deep learning to the problem of extractive text s...
International audienceText representation is a fundamental cornerstone that impacts the effectivenes...
The need for text summarization is crucial as we enter the era of information overload. In this pape...
Over the past two decades, with the advancements in the World Wide Web and Internet, there has been ...
The number of electronic documents as a media of business and academic information has increased tre...