Summarization systems for various applications, such as opinion mining, online news services, and answering questions, have attracted increasing attention in recent years. These tasks are complicated, and a classic representation using bag-of-words does not adequately meet the comprehensive needs of applications that rely on sentence extraction. In this paper, we focus on representing sentences as continuous vectors as a basis for measuring relevance between user needs and candidate sentences in source documents. Embedding models based on distributed vector representations are often used in the summarization community because, through cosine similarity, they simplify sentence relevance when comparing two sentences or a sentence/query and a ...
We show that by making use of information common to document sets belonging to a common category, we...
Addressing the problem of information overload, automatic multi-document summarization (MDS) has bee...
To address the problem of query-focused multi-document summarisation, we present a novel unsupervise...
This dissertation provides a new method for sentence embedding and document summarization. The topic...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
Owing to the rapidly growing multimedia content available on the Internet, extractive spoken documen...
Automatic summarization can help users extract the most important pieces of information from the vas...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Automated multi-document extractive text summarization is a widely studied research problem in the f...
Automatic summarization is the process of presenting the contents of written documents in a short, c...
In this paper, we attack the problem of forming extracts for text summarization. Forming extracts in...
Most up-to-date well-behaved topic-based summarization systems are built upon the extractive framewo...
Multi-document summarization addressing the problem of information overload has been widely utilized...
The need for text summarization is crucial as we enter the era of information overload. In this pape...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
We show that by making use of information common to document sets belonging to a common category, we...
Addressing the problem of information overload, automatic multi-document summarization (MDS) has bee...
To address the problem of query-focused multi-document summarisation, we present a novel unsupervise...
This dissertation provides a new method for sentence embedding and document summarization. The topic...
International audienceExtractive summarization consists of generating a summary by ranking sentences...
Owing to the rapidly growing multimedia content available on the Internet, extractive spoken documen...
Automatic summarization can help users extract the most important pieces of information from the vas...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Automated multi-document extractive text summarization is a widely studied research problem in the f...
Automatic summarization is the process of presenting the contents of written documents in a short, c...
In this paper, we attack the problem of forming extracts for text summarization. Forming extracts in...
Most up-to-date well-behaved topic-based summarization systems are built upon the extractive framewo...
Multi-document summarization addressing the problem of information overload has been widely utilized...
The need for text summarization is crucial as we enter the era of information overload. In this pape...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
We show that by making use of information common to document sets belonging to a common category, we...
Addressing the problem of information overload, automatic multi-document summarization (MDS) has bee...
To address the problem of query-focused multi-document summarisation, we present a novel unsupervise...