Evaluation of Multistrategy Classifiers for Heterogeneous Ontology Matching On the Semantic Web Evaluation of Multistrategy Classifiers for Heterogeneous Ontology Matching On the Semantic Web

Evaluation of Multistrategy Classifiers for Heterogeneous Ontology Matching On the Semantic Web

  • 期刊名字:东华大学学报(英文版)
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  • 论文作者:PAN Le-yun,LIU Xiao-qiang,MA F
  • 作者单位:Department of Computer Science and Engineering Shanghai J iaoTong University,Computer Center Donghua University
  • 更新时间:2023-04-19
  • 下载次数:
论文简介

On the semantic web, data interoperability and ontology heterogeneity are becoming ever more important issues. To resolve these problems, multiple classification methods can be used to learn the matching between ontologies. The paper uses the general statistic classification method to discover category features in data instances and use the first-order learning algorithm FOIL to exploit the semantic relations among data instances. When using mulfistrategy learning approach, a central problem is the evaluation of multistrategy classifiers. The goal and the conditions of using multistrategy classifiers within ontology matching are different from the ones for general text classification. This paper describes the combination rule of multiple classifiers called the Best Outstanding Champion, which is suitable for heterogeneous ontology mapping. On the prediction results of individual methods, the method can well accumulate the correct matching of alone classifier. The experiments show that the approach achieves high accuracy on real-world domain.

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