Graph-ranking based methods have been developed for genetic multi-document summarization in recent years and they make uniform use of the relationships between sentences to extract salient sentences. This paper proposes to integrate the relevance of the sentences to the specified topic into the graph-ranking based method for topic-focused multi-document summarization. The cross-document relationships and the within-document relationships between sentences are differentiated and we apply the graph-ranking based method using each individual kind of sentence relationships and explore their relative importance for topic-focused multi-document summarization. Experimental results on DUC2003 and DUC2005 demonstrate the great importance of the cros...
News articles which are available through online search often provide readers with large collection ...
The aim of automatic multi-document abstractive summarization is to create a compressed version of t...
Graph-based manifold-ranking methods have been successfully applied to topic-focused multi-document ...
In recent years graph-ranking based algorithms have been proposed for single document summarization ...
Graph-based methods have been developed for multi-document summarization in recent years and they ma...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
This paper proposes a unified extractive approach based on affinity graph to both generic and topic-...
This paper proposes a unified extractive approach based on affinity graph to both generic and topic-...
The graph-based ranking algorithm has been recently exploited for multi-document summarization by ma...
In recent years, graph-based models and ranking algorithms have drawn considerable attention from th...
Multi-document summarization aims to produce a compressed version of numerous online text documents ...
Abstract. In this work we investigate the use of graphs for multi-document summarization. We adapt t...
In this paper, we introduce a novel graph based technique for topic based multi-document summarizati...
News articles which are available through online search often provide readers with large collection ...
The aim of automatic multi-document abstractive summarization is to create a compressed version of t...
Graph-based manifold-ranking methods have been successfully applied to topic-focused multi-document ...
In recent years graph-ranking based algorithms have been proposed for single document summarization ...
Graph-based methods have been developed for multi-document summarization in recent years and they ma...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
This paper proposes a unified extractive approach based on affinity graph to both generic and topic-...
This paper proposes a unified extractive approach based on affinity graph to both generic and topic-...
The graph-based ranking algorithm has been recently exploited for multi-document summarization by ma...
In recent years, graph-based models and ranking algorithms have drawn considerable attention from th...
Multi-document summarization aims to produce a compressed version of numerous online text documents ...
Abstract. In this work we investigate the use of graphs for multi-document summarization. We adapt t...
In this paper, we introduce a novel graph based technique for topic based multi-document summarizati...
News articles which are available through online search often provide readers with large collection ...
The aim of automatic multi-document abstractive summarization is to create a compressed version of t...
Graph-based manifold-ranking methods have been successfully applied to topic-focused multi-document ...