In previous works, subtopics are seldom mentioned in multi-document summarization while only one topic is focused to extract summary. In this paper, we propose a subtopic- focused model to score sentences in the extractive summarization task. Different with supervised methods, it does not require costly manual work to form the training set. Multiple documents are represented as mixture over subtopics, denoted by term distributions through unsupervised learning. Our method learns the subtopic distribution over sentences via a hierarchical Bayesian model, through which sentences are scored and extracted as summary. Experiments on DUC 2006 data are performed and the ROUGE evaluation results show that the proposed method can reach the state-of-...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
The TNO system for multi-document summarisation is based on an extraction approach. We combined two ...
Abstract—Multi-document summarization systems must be able to draw the “best ” information from a se...
In previous works, subtopics are seldom mentioned in multi-document summarization while only one top...
In text summarization, relevance and coverage are two main criteria that decide the quality of a sum...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
We propose a new method for query-biased multi-document summarization, based on sentence extraction....
International audienceWe propose a new method for query-biased multi-document summarization, based o...
Automated multi-document extractive text summarization is a widely studied research problem in the f...
Abstract—We propose a novel approach for unsupervised extractive summarization. Our approach builds ...
The production of accurate and complete multiple-document summaries is challenged by the complexit...
This paper discusses an sentence extraction approach to multi-document summarization that builds on ...
Sentence-level extractive summarization is a fundamental yet challenging task, and recent powerful a...
Topic-focused multidocument summarization has been a challenging task because the created summary is...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
The TNO system for multi-document summarisation is based on an extraction approach. We combined two ...
Abstract—Multi-document summarization systems must be able to draw the “best ” information from a se...
In previous works, subtopics are seldom mentioned in multi-document summarization while only one top...
In text summarization, relevance and coverage are two main criteria that decide the quality of a sum...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
We propose a new method for query-biased multi-document summarization, based on sentence extraction....
International audienceWe propose a new method for query-biased multi-document summarization, based o...
Automated multi-document extractive text summarization is a widely studied research problem in the f...
Abstract—We propose a novel approach for unsupervised extractive summarization. Our approach builds ...
The production of accurate and complete multiple-document summaries is challenged by the complexit...
This paper discusses an sentence extraction approach to multi-document summarization that builds on ...
Sentence-level extractive summarization is a fundamental yet challenging task, and recent powerful a...
Topic-focused multidocument summarization has been a challenging task because the created summary is...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
The TNO system for multi-document summarisation is based on an extraction approach. We combined two ...
Abstract—Multi-document summarization systems must be able to draw the “best ” information from a se...