Multi-document summarization involves many aspects of content selection and sur-face realization. The summaries must be informative, succinct, grammatical, and obey stylistic writing conventions. We present a method where such individual aspects are learned separately from data (without any hand-engineering) but optimized jointly using an integer linear programme. The ILP framework allows us to combine the decisions of the expert learners and to select and rewrite source content through a mixture of objective setting, soft and hard constraints. Experimental results on the TAC-08 data set show that our model achieves state-of-the-art performance using ROUGE and signifi-cantly improves the informativeness of the summaries.
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
With advances in information technology, people face the problem of dealing with tremendous amounts ...
Problem statement: Text summarization can be of different nature ranging from indicative summary tha...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
In this paper, we propose an extractive multi-document summarization (MDS) system using joint optimi...
In this paper, we propose an extractive multi-document summarization (MDS) system using joint optimi...
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...
Summarizing content contributed by individuals can be challenging, because people make different lex...
In this paper1 we present a linear model for the problem of text summarization, where a summary pres...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
In this paper, we propose a novel approach to automatic generation of aspect-oriented sum-maries fro...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
In this paper, we propose a novel approach to automatic generation of aspect-oriented sum-maries fro...
We show that a simple procedure based on max-imizing the number of informative content-words can pro...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
With advances in information technology, people face the problem of dealing with tremendous amounts ...
Problem statement: Text summarization can be of different nature ranging from indicative summary tha...
This paper proposes an extractive generic text summarization model that generates summaries by selec...
In this paper, we propose an extractive multi-document summarization (MDS) system using joint optimi...
In this paper, we propose an extractive multi-document summarization (MDS) system using joint optimi...
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...
Summarizing content contributed by individuals can be challenging, because people make different lex...
In this paper1 we present a linear model for the problem of text summarization, where a summary pres...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
In this paper, we propose a novel approach to automatic generation of aspect-oriented sum-maries fro...
This paper presents a problem-reduction approach to extractive multi-document summarization: we pr...
In this paper, we propose a novel approach to automatic generation of aspect-oriented sum-maries fro...
We show that a simple procedure based on max-imizing the number of informative content-words can pro...
Automatic summarization has advanced greatly in the past few decades. However, there remains a huge ...
With advances in information technology, people face the problem of dealing with tremendous amounts ...
Problem statement: Text summarization can be of different nature ranging from indicative summary tha...