Multidocument summarization addresses the selection of a compact subset of highly informative sentences, i.e., the summary, from a collection of textual documents. To perform sentence selection, two parallel strategies have been proposed: (a) apply general-purpose techniques relying on datamining or information retrieval techniques, and/or (b) perform advanced linguistic analysis relying on semantics-based models (e.g., ontologies) to capture the actual sentence meaning. Since there is an increasing need for processing documents written in different languages, the attention of the research community has recently focused on summarizers based on strategy (a). This article presents a novelmultilingual summarizer, namely MWI-Sum (Multilingual W...
Text summarization is the process of distilling the most important in-formation from source/sources ...
Due to the tremendous amount of data available today, extracting essential information from such a l...
The research described here focuses on multi-lingual summarization (MLS). Summaries of documents are...
Multidocument summarization addresses the selection of a compact subset of highly informative senten...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
This paper describes a multidocument summarizer built upon re-search into the detection of new infor...
In this book chapter, we discuss several pertinent aspects of an automatic system that generates sum...
The trend toward the growing multilinguality of the Internet requires text summarization techniques ...
We present a new approach for summarizing clusters of documents on the same event, some of which a...
Abstract—MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarizati...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarization. MUSE ...
International audienceWe present MLSUM, the first large-scale MultiLingual SUMmarization dataset. Ob...
We are presenting a method for the evaluation of multilingual multi-document summarisation that allo...
We show that by making use of information common to document sets belonging to a common category, we...
Text summarization is the process of distilling the most important in-formation from source/sources ...
Due to the tremendous amount of data available today, extracting essential information from such a l...
The research described here focuses on multi-lingual summarization (MLS). Summaries of documents are...
Multidocument summarization addresses the selection of a compact subset of highly informative senten...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
This paper describes a multidocument summarizer built upon re-search into the detection of new infor...
In this book chapter, we discuss several pertinent aspects of an automatic system that generates sum...
The trend toward the growing multilinguality of the Internet requires text summarization techniques ...
We present a new approach for summarizing clusters of documents on the same event, some of which a...
Abstract—MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarizati...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarization. MUSE ...
International audienceWe present MLSUM, the first large-scale MultiLingual SUMmarization dataset. Ob...
We are presenting a method for the evaluation of multilingual multi-document summarisation that allo...
We show that by making use of information common to document sets belonging to a common category, we...
Text summarization is the process of distilling the most important in-formation from source/sources ...
Due to the tremendous amount of data available today, extracting essential information from such a l...
The research described here focuses on multi-lingual summarization (MLS). Summaries of documents are...