We are presenting a method for the evaluation of multilingual multi-document summarisation that allows saving precious annotation time and that makes the evaluation results across languages directly comparable. The approach is based on the manual selection of the most important sentences in a cluster of documents from a sentence-aligned parallel corpus, and by projecting the sentence selection to various target languages. We also present two ways of exploiting inter-annotator agreement levels, apply them both to a baseline sentence extraction summariser in seven languages, and discuss the result differences between the two evaluation versions, as well as between languages. The same method can in principle be used to evaluate single-document...
This paper describes a method for language independent extractive summarization that relies on itera...
This paper discusses a text extraction approach to multi-document summarization that builds on singl...
U.S.A. This paper discusses a text extraction approach to multi-document summarization that builds o...
We are presenting a method for the evaluation of multilingual multi-document summarisation that allo...
We describe our work on the development of Language and Evaluation Resources for the evaluation of s...
The trend toward the growing multilinguality of the Internet requires text summarization techniques ...
The multilingual summarization pilot task at TAC’11 opened a lot of problems we are facing when we t...
In this book chapter, we discuss several pertinent aspects of an automatic system that generates sum...
We present a new approach for summarizing clusters of documents on the same event, some of which a...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarization. MUSE ...
Multidocument summarization addresses the selection of a compact subset of highly informative senten...
Abstract—MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarizati...
This paper discusses an sentence extraction approach to multi-document summarization that builds on ...
The popularization of social networks and digital documents has quickly increased the multilingual i...
This paper describes a method for language independent extractive summarization that relies on itera...
This paper discusses a text extraction approach to multi-document summarization that builds on singl...
U.S.A. This paper discusses a text extraction approach to multi-document summarization that builds o...
We are presenting a method for the evaluation of multilingual multi-document summarisation that allo...
We describe our work on the development of Language and Evaluation Resources for the evaluation of s...
The trend toward the growing multilinguality of the Internet requires text summarization techniques ...
The multilingual summarization pilot task at TAC’11 opened a lot of problems we are facing when we t...
In this book chapter, we discuss several pertinent aspects of an automatic system that generates sum...
We present a new approach for summarizing clusters of documents on the same event, some of which a...
The recent advances in multimedia and web-based applications have eased the accessibility to large c...
MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarization. MUSE ...
Multidocument summarization addresses the selection of a compact subset of highly informative senten...
Abstract—MUltilingual Sentence Extractor (MUSE) is aimed at multilingual single-document summarizati...
This paper discusses an sentence extraction approach to multi-document summarization that builds on ...
The popularization of social networks and digital documents has quickly increased the multilingual i...
This paper describes a method for language independent extractive summarization that relies on itera...
This paper discusses a text extraction approach to multi-document summarization that builds on singl...
U.S.A. This paper discusses a text extraction approach to multi-document summarization that builds o...