Data Warehousing and Knowledge Discovery, Proceedings 4081, pp. 374-383, DOI: http://dx.doi.org/10.1007/11823728In this paper, we introduce a coherent biomedical literature clustering and summarization approach that employs a graphical representation method for text using a biomedical ontology. The key of the approach is to construct document cluster models as semantic chunks capturing the core semantic relationships in the ontology-enriched scale-free graphical representation of documents. These document cluster models are used for both document clustering and text summarization by constructing Text Semantic Interaction Network (TSIN). Our extensive experimental results indicate our approach shows 45% cluster quality improvement and 72% cl...
Paper presented at the 9th International Conference on Data Warehousing and Knowledge Discovery, DaW...
Advancements in the biomedical community are largely documented and published in text format in scie...
We investigate the accuracy of different similarity approaches for clustering over two million biome...
Abstract. In this paper, we introduce a coherent biomedical literature clustering and summarization ...
We introduce a method that integrates biomedical literature clustering and summarization using biome...
A huge amount of biomedical knowledge and novel discoveries have been produced and collected in text...
Abstract. In this paper we introduce a novel document clustering approach that solves some major pro...
19th IEEE International Symposium on Computer-Based Medical Systems, CBMS 2006, Salt Lake City, UTDo...
Presented at the 2006 ACM/IEEE Joint Conference on Digital Library (JCDL 2006), June 11-15, 2006, Ch...
AbstractObjective:Automatic summarization of biomedical literature usually relies on domain knowledg...
We introduce a novel document clustering approach that overcomes those problems by combining a seman...
Presented at the the IEEE Conference on Intelligent Systems (IEEE IS’06), Sept 4-6, 2006. Retrieved ...
We introduce a novel document clustering approach that overcomes those problems by combining a seman...
Title from PDF of title page, viewed on January 20, 2011.Dissertation advisor: Yugyung Lee.Vita.Incl...
Document clustering has been used for better document retrieval, document browsing, and text mining....
Paper presented at the 9th International Conference on Data Warehousing and Knowledge Discovery, DaW...
Advancements in the biomedical community are largely documented and published in text format in scie...
We investigate the accuracy of different similarity approaches for clustering over two million biome...
Abstract. In this paper, we introduce a coherent biomedical literature clustering and summarization ...
We introduce a method that integrates biomedical literature clustering and summarization using biome...
A huge amount of biomedical knowledge and novel discoveries have been produced and collected in text...
Abstract. In this paper we introduce a novel document clustering approach that solves some major pro...
19th IEEE International Symposium on Computer-Based Medical Systems, CBMS 2006, Salt Lake City, UTDo...
Presented at the 2006 ACM/IEEE Joint Conference on Digital Library (JCDL 2006), June 11-15, 2006, Ch...
AbstractObjective:Automatic summarization of biomedical literature usually relies on domain knowledg...
We introduce a novel document clustering approach that overcomes those problems by combining a seman...
Presented at the the IEEE Conference on Intelligent Systems (IEEE IS’06), Sept 4-6, 2006. Retrieved ...
We introduce a novel document clustering approach that overcomes those problems by combining a seman...
Title from PDF of title page, viewed on January 20, 2011.Dissertation advisor: Yugyung Lee.Vita.Incl...
Document clustering has been used for better document retrieval, document browsing, and text mining....
Paper presented at the 9th International Conference on Data Warehousing and Knowledge Discovery, DaW...
Advancements in the biomedical community are largely documented and published in text format in scie...
We investigate the accuracy of different similarity approaches for clustering over two million biome...