International audienceIn concept-based summarization, sentence selection is modelled as a budgeted maximum coverage problem. As this problem is NP-hard, pruning low-weight concepts is required for the solver to find optimal solutions efficiently. This work shows that reducing the number of concepts in the model leads to lower Rouge scores, and more importantly to the presence of multiple optimal solutions. We address these issues by extending the model to provide a single optimal solution, and eliminate the need for concept pruning using an approximation algorithm that achieves comparable performance to exact inference
The field of natural language processing has made great advances in thelast decades. Most of us have...
This paper describes a method of multi-document summarization with evolutionary computation. In auto...
In Natural Language Processing, multi-document summarization (MDS) poses many challenges to research...
International audienceIn concept-based summarization, sentence selection is modelled as a budgeted m...
In concept-based summarization, sentence selection is modelled as a budgeted maxi-mum coverage probl...
In concept-based summarization, sentence selection is modelled as a budgeted maxi-mum coverage probl...
HAL is a multi-disciplinary open access archive for the deposit and dissemination of sci-entific res...
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...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
We present an Integer Linear Program for exact inference under a maximum coverage model for automati...
Multi-document summarization involves many aspects of content selection and sur-face realization. Th...
The field of natural language processing has made great advances in thelast decades. Most of us have...
Comparative news summarization aims to highlight the commonalities and differences between two compa...
AbstractThis paper evaluates the performance of two unsupervised approaches, Maximum Marginal Releva...
The field of natural language processing has made great advances in thelast decades. Most of us have...
This paper describes a method of multi-document summarization with evolutionary computation. In auto...
In Natural Language Processing, multi-document summarization (MDS) poses many challenges to research...
International audienceIn concept-based summarization, sentence selection is modelled as a budgeted m...
In concept-based summarization, sentence selection is modelled as a budgeted maxi-mum coverage probl...
In concept-based summarization, sentence selection is modelled as a budgeted maxi-mum coverage probl...
HAL is a multi-disciplinary open access archive for the deposit and dissemination of sci-entific res...
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...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
We present an Integer Linear Program for exact inference under a maximum coverage model for automati...
Multi-document summarization involves many aspects of content selection and sur-face realization. Th...
The field of natural language processing has made great advances in thelast decades. Most of us have...
Comparative news summarization aims to highlight the commonalities and differences between two compa...
AbstractThis paper evaluates the performance of two unsupervised approaches, Maximum Marginal Releva...
The field of natural language processing has made great advances in thelast decades. Most of us have...
This paper describes a method of multi-document summarization with evolutionary computation. In auto...
In Natural Language Processing, multi-document summarization (MDS) poses many challenges to research...