The Semantic Link Network is a semantics modeling method for effective information services. This paper proposes a new text summarization approach that extracts Semantic Link Network from scientific paper consisting of language units of different granularities as nodes and semantic links between the nodes, and then ranks the nodes to select Top-k sentences to compose summary. A set of assumptions for reinforcing representative nodes is set to reflect the core of paper. Then, Semantic Link Networks with different types of node and links are constructed with different combinations of the assumptions. Finally, an iterative ranking algorithm is designed for calculating the weight vectors of the nodes in a converged iteration process. The iterat...
Automatic text summarization generates a summary that contains sentences reflecting the essential an...
With the explosive growth of Internet and computing technology, human beings are confronted by a gre...
To model the complex reality, it is necessary to develop a powerful semantic model. A rational appro...
The Semantic Link Network is a semantics modeling method for effective information services. This pa...
The key to realize advanced document summarization is semantic representation of documents. This pap...
The Semantic Link Network is a general semantic model for modeling the structure and the evolution o...
The Semantic Link Network is a general semantic model for modeling the structure and the evolution o...
Most existing methods for extractive text summarization aim to extract important sentences with stat...
In this paper we perform a preliminary analysis of semantic networks to determine the most important...
Automatic summarization of texts is now crucial for several information retrieval tasks owing to the...
Extractive multi-document summarization systems usually rank sentences in a document set with some r...
AbstractIn this paper an approach of Semantic Knowledge Extraction (SKE), from a set of research pap...
Abstract — With the rapid growth of online information which is unstructured in nature poses a great...
AbstractIn this paper, we propose a method for calculating important scores of sentences for text su...
Automatic text summarization generates a summary that contains sentences reflecting the essential an...
With the explosive growth of Internet and computing technology, human beings are confronted by a gre...
To model the complex reality, it is necessary to develop a powerful semantic model. A rational appro...
The Semantic Link Network is a semantics modeling method for effective information services. This pa...
The key to realize advanced document summarization is semantic representation of documents. This pap...
The Semantic Link Network is a general semantic model for modeling the structure and the evolution o...
The Semantic Link Network is a general semantic model for modeling the structure and the evolution o...
Most existing methods for extractive text summarization aim to extract important sentences with stat...
In this paper we perform a preliminary analysis of semantic networks to determine the most important...
Automatic summarization of texts is now crucial for several information retrieval tasks owing to the...
Extractive multi-document summarization systems usually rank sentences in a document set with some r...
AbstractIn this paper an approach of Semantic Knowledge Extraction (SKE), from a set of research pap...
Abstract — With the rapid growth of online information which is unstructured in nature poses a great...
AbstractIn this paper, we propose a method for calculating important scores of sentences for text su...
Automatic text summarization generates a summary that contains sentences reflecting the essential an...
With the explosive growth of Internet and computing technology, human beings are confronted by a gre...
To model the complex reality, it is necessary to develop a powerful semantic model. A rational appro...