Browse > Article
http://dx.doi.org/10.6109/jkiice.2013.17.2.453

Retrieval Framework for Enterprise Information Integration based on Concept Net in Cloud Environment  

Jung, Kye-Dong (광운대학교 교양학부)
Moon, Seok-Jae (광운대학교)
Abstract
This study proposes a framework that enables efficient integration and usage of enterprise data using semantic based concept net. Integration of enterprise information that has been increasing geometrically in cloud environment. The concept net is very similar in approaching way to existing ontology. However, it builds correlation between object and concept to help user's information integration retrieval more efficiently. In this study, concept nets are divided into 3 kinds and are applied to the proposed framework independently. The concept net in this study is built in ontology format based on master information concept net, keyword concept net and business process concept net. This concept net enables retrieval and usage of data based on correlation among data according to user's request. Then, through combination of master information concept and keyword concept, it provides frequency trace of keyword and category thus improving convenience and speed of retrieval.
Keywords
Cloud environment; Concept net; Information integration; Semantic ontology;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 Raghu Rmakrishnan, "Sherpa: Cloud Computing of the Third Kind", Data-Intensive Computing Symposium, 2008.
2 lorescu, D, Kossmann, D, and Manolescu, L, "Integrating Keyword Search into XML Query Processing," Computer Networks, Vol.33, No.1-6, pp.119-135, 2000.   DOI   ScienceOn
3 Ganter, B., Wille, R., "Formal Concept Analysis: Mathematical Foundations", Heidelberg, Springer, 1999.
4 Peter D. Turney, Patrick Pantel, "From Frequency to Meaning : Vector Space Models of Semantics", Journal of Articial Intelligence Research 37, 2010. pp,141-188.
5 Pablo CASTELLS, Miriam FERNÁNDEZ, and David VALLET, "An Adaptation of the Vector-Space Model for Ontology-Based Information Retrieval", IEEE Transactions on Knowledge and Data Engineering, Vol. 19, No. 2, 2007.
6 Doug Downey, Oren Etzioni, and Stephen Soderland, "A Probabilistic Model of Redundancy in Information Extraction", IJCAI'05 Proceedings of the 19th international joint conference on Artificial intelligence.
7 Ji-Rong Wen, Ni Lao, Wei-Ying Ma, "Probabilistic Model for Contextual Retrieval" In IJCAI'05: Proceedings of the 19th international joint conference on Artificial intelligence, pp. 1034-1041. 2005.
8 SeokJae Moon, GyeDong Jung, ChiGon Hwang and Young Keun Choi, "Cooperation System Design for the XMDR-based Business Process", Security- Enriched Urban Computing and Smart Grid Communications in Computer and Information Science, Vol. 78, pp448-453, 2011.
9 XMDR, www.xmdr.org
10 멀티 온톨로지 기반의 키워드 연관성을 이용한 전 문가 검색 시스템 / 황치곤, 정계동, 최영근 / 정보통신학회논문지, Vol.16, No.1, pp.183-190, 2012.1.30
11 Fidel C, Victor C, Carmen G AND Angel V,"Hybrid Architecture for Web Search Systems Based on Hierarchical Taxonomies", JOURNAL OF INFORMATION SCIENCE AND ENGINEERING Vol 22, pp,863-887. 2006.
12 S. Lakshmi Devi,"Ontology Based Relevance Criteria for Semantic Web Search Engine", International Journal of Research and Reviews in Information Sciences Vol. 2, 2012.