Traditional graph based sentence ranking algorithms such as LexRank and HITS model the documents to be summarized as a text graph where nodes represent sentences and edges represent pairwise relations. Such modeling cannot capture complex group relationship shared among multiple sentences which can be useful for sentence ranking. In this paper, we propose to take advantage of hypergraph to remedy this defect. In a text hypergraph, nodes still represent sentences, yet hyperedges are allowed to connect more than two sentences. With a text hypergraph, we are thus able to integrate both group relationship and pairwise relationship into a unified framework. Then, a hypergraph based semi-supervised sentence ranking algorithm is developed for quer...
Graph-based ranking algorithm has been recently exploited for summarization by using sentence-to-sen...
Extractive multi-document summarization systems usually rank sentences in a document set with some r...
In recent years graph-ranking based algorithms have been proposed for single document summarization ...
Traditional graph based sentence ranking algorithms such as LexRank and HITS model the documents to ...
Traditional graph based sentence ranking algorithms such as LexRank and HITS model the documents to ...
In recent years, graph-based models and ranking algorithms have drawn considerable attention from th...
Abstract: This paper presents an innovative unsupervised method for automatic sentence extraction us...
Sentence ranking is the issue of most concern in document summarization today. While traditional fea...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
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...
The graph-based ranking algorithm has been recently exploited for multi-document summarization by ma...
Extractive summarization aims to produce a concise version of a document by extracting information-r...
Extractive summarization aims to produce a concise version of a document by extracting information-r...
Graph-based ranking algorithm has been recently exploited for summarization by using sentence-to-sen...
Extractive multi-document summarization systems usually rank sentences in a document set with some r...
In recent years graph-ranking based algorithms have been proposed for single document summarization ...
Traditional graph based sentence ranking algorithms such as LexRank and HITS model the documents to ...
Traditional graph based sentence ranking algorithms such as LexRank and HITS model the documents to ...
In recent years, graph-based models and ranking algorithms have drawn considerable attention from th...
Abstract: This paper presents an innovative unsupervised method for automatic sentence extraction us...
Sentence ranking is the issue of most concern in document summarization today. While traditional fea...
Graph-based ranking algorithms have recently been proposed for single document summarizations and su...
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...
The graph-based ranking algorithm has been recently exploited for multi-document summarization by ma...
Extractive summarization aims to produce a concise version of a document by extracting information-r...
Extractive summarization aims to produce a concise version of a document by extracting information-r...
Graph-based ranking algorithm has been recently exploited for summarization by using sentence-to-sen...
Extractive multi-document summarization systems usually rank sentences in a document set with some r...
In recent years graph-ranking based algorithms have been proposed for single document summarization ...