会议专题

An Ontology Learning Method Based on Document Clustering

  Ontology learning is a series method and technology of semi-automatic ontology construction,which uses various data sources to create or expand in-built ontology by semi-automatic method to build a new ontology.Existing ontology construction methods are to collect a large number of conceptual terms based on a large number of field text and background corpus,and then to select field concepts to construct a body.The proposed Cluster-Merge algorithm is to use k-means clustering algorithm in the field document at first,then according to document clustering results to construct body by themself,at last accoring to the ontology similarity for ontology merging to get final output ontology.The experiment may prove that Cluster-Merge algorithm can improve the body resulting recall and precision.

ontology learning document clustering k-means clustering algorithm similarity ontology merging

Xianmin Wei

Computer and Communication Engineering School of Weifang University Weifang, China

国际会议

the Second International Conference on Frontiers of Manufacturing and Design Science(第二届制造与设计科学国际会议(ICFMD 2011))

台湾

英文

1911-1915

2011-12-11(万方平台首次上网日期,不代表论文的发表时间)