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Expert Discovery and Knowledge Mining in Complex Multi-agent Systems

Journal Article


Abstract


  • Complex problem solving requires diverse expertise and multiple techniques. In order to solve such problems, complex multi-agent systems that include both of human experts and autonomous agents are required in many application domains. Most complex multi-agent systems work in open domains and include various heterogeneous agents. Due to the heterogeneity of agents and dynamic features of working environments, expertise and capabilities of agents might not be well estimated and presented in these systems. Therefore, how to discover useful knowledge from human and autonomous experts, make more accurate estimation for experts capabilities and find out suitable expert(s) to solve incoming problems (Expert Mining) are important research issues in the area of multi-agent system. In this paper, we introduce an ontology-based approach for knowledge and expert mining in hybrid multi-agent systems. In this research, ontologies are hired to describe knowledge of the system. Knowledge and expert mining processes are executed as the system handles incoming problems. In this approach, we embed more self-learning and self-adjusting abilities in multi-agent systems, so as to help in discovering knowledge of heterogeneous experts of multi-agent systems.

UOW Authors


  •   Zhang, Minjie
  •   Tang, Xijin (external author)
  •   Bai, Quan (external author)
  •   Gu, Jifa (external author)

Publication Date


  • 2007

Citation


  • Zhang, M., Tang, X., Bai, Q. & Gu, J. (2007). Expert Discovery and Knowledge Mining in Complex Multi-agent Systems. Journal of Systems Science and Systems Engineering, 16 (2), 222-234.

Scopus Eid


  • 2-s2.0-34347263449

Ro Metadata Url


  • http://ro.uow.edu.au/infopapers/1367

Number Of Pages


  • 12

Start Page


  • 222

End Page


  • 234

Volume


  • 16

Issue


  • 2

Place Of Publication


  • http://www.springerlink.com/content/119912/?p=722a57a2e27e4594bd3d3be2b22a943b&pi=63

Abstract


  • Complex problem solving requires diverse expertise and multiple techniques. In order to solve such problems, complex multi-agent systems that include both of human experts and autonomous agents are required in many application domains. Most complex multi-agent systems work in open domains and include various heterogeneous agents. Due to the heterogeneity of agents and dynamic features of working environments, expertise and capabilities of agents might not be well estimated and presented in these systems. Therefore, how to discover useful knowledge from human and autonomous experts, make more accurate estimation for experts capabilities and find out suitable expert(s) to solve incoming problems (Expert Mining) are important research issues in the area of multi-agent system. In this paper, we introduce an ontology-based approach for knowledge and expert mining in hybrid multi-agent systems. In this research, ontologies are hired to describe knowledge of the system. Knowledge and expert mining processes are executed as the system handles incoming problems. In this approach, we embed more self-learning and self-adjusting abilities in multi-agent systems, so as to help in discovering knowledge of heterogeneous experts of multi-agent systems.

UOW Authors


  •   Zhang, Minjie
  •   Tang, Xijin (external author)
  •   Bai, Quan (external author)
  •   Gu, Jifa (external author)

Publication Date


  • 2007

Citation


  • Zhang, M., Tang, X., Bai, Q. & Gu, J. (2007). Expert Discovery and Knowledge Mining in Complex Multi-agent Systems. Journal of Systems Science and Systems Engineering, 16 (2), 222-234.

Scopus Eid


  • 2-s2.0-34347263449

Ro Metadata Url


  • http://ro.uow.edu.au/infopapers/1367

Number Of Pages


  • 12

Start Page


  • 222

End Page


  • 234

Volume


  • 16

Issue


  • 2

Place Of Publication


  • http://www.springerlink.com/content/119912/?p=722a57a2e27e4594bd3d3be2b22a943b&pi=63