Hy-SN: Hyper-graph based semantic network

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摘要

Knowledge representation is a critical basis for knowledge management. With considering a balance between machine- and human-understandable, we propose a new knowledge representation model by combining the semantic network and the hyper-graph. We refer to this model as ‘hyper-graph based semantic network’ (Hy-SN), which can represent more complex semantic relationships and have a more efficient data structure for storing knowledge in repositories. This paper also investigates the reasoning mechanisms of Hy-SN, which includes: the logical, analogical, and inductive reasoning. Implicit semantic relationships can be derived on the basis of these reasoning mechanisms. Three application cases based on Hy-SN are illustrated to validate its rationality and practicability.

论文关键词:Knowledge representation,Semantic network,Hyper-graph,Reasoning,Knowledge management

论文评审过程:Received 15 April 2008, Revised 11 May 2010, Accepted 12 May 2010, Available online 27 May 2010.

论文官网地址:https://doi.org/10.1016/j.knosys.2010.05.005