AI Chat Paper
Note: Please note that the following content is generated by AMiner AI. SciOpen does not take any responsibility related to this content.
{{lang === 'zh_CN' ? '文章概述' : 'Summary'}}
{{lang === 'en_US' ? '中' : 'Eng'}}
Chat more with AI
PDF (1.8 MB)
Collect
Submit Manuscript AI Chat Paper
Show Outline
Outline
Show full outline
Hide outline
Outline
Show full outline
Hide outline
Open Access

SL-CMTGP: An Effective Knowledge Interaction Matching Model Between Multitasks for Large-Scale Biomedical Ontologies

School of Electrical and Power Engineering, Taiyuan University of Technology, Taiyuan 030024, China
Department of Computing Technologies, Swinburne University of Technology, Melbourne 3000, Australia
Fujian Provincial Key Laboratory of Big Data Mining and Applications, Fujian University of Technology, Fuzhou 350118, China
Show Author Information

Abstract

Biomedical ontologies encapsulate the vast knowledge within the medical domain, facilitating communication and data exchange. However, the heterogeneity of these ontologies often impedes knowledge exchange, especially in large-scale biomedical ontologies. Biomedical Ontology Matching (BOM) based on partitioning addresses this issue by dividing extensive ontologies into manageable sub-ontologies and identifying equivalence relationships among heterogeneous entities. Recently, Genetic Programming (GP) has been widely employed as an effective technique for optimizing and combining ontology Similarity Features (SFs). Nevertheless, the traditional GP methods struggle with the matching tasks due to the numerous and complex SFs of the partitioned sub-ontologies. To tackle these challenges, this paper proposes an efficient multi-task matching model to solve large-scale BOM problems. Firstly, an anchor-based partitioning method is introduced, which reduces the search space while retaining more informative sub-ontologies, ensuring high-quality subsequent matching. Secondly, a novel Self-Learning Compact MultiTask Genetic Programming (SL-CMTGP) method is proposed for constructing entity SFs. This method autonomously explores correlations among different matching tasks and leverages an implicit knowledge transfer mechanism to perform evolutionary operations, significantly enhancing BOM matching quality while reducing computational complexity. Lastly, a new approximate evaluation metric is introduced to improve the guidance of evolutionary algorithms, addressing the bias problem and overcoming local optima in individual tasks. Experimental evaluations are conducted on six test cases from the Anatomy, Large Biomedical Ontologies, and Disease and Phenotype Tracks of the Ontology Alignment Evaluation Initiative (OAEI). The results demonstrate that the proposed method consistently achieves high-quality matching outcomes and significantly improves BOM efficiency across different test cases.

References

【1】
【1】
 
 
Big Data Mining and Analytics
Pages 1148-1173

{{item.num}}

Comments on this article

Go to comment

< Back to all reports

Review Status: {{reviewData.commendedNum}} Commended , {{reviewData.revisionRequiredNum}} Revision Required , {{reviewData.notCommendedNum}} Not Commended Under Peer Review

Review Comment

Close
Close
Cite this article:
Sun D, Lv Q, Tsai P, et al. SL-CMTGP: An Effective Knowledge Interaction Matching Model Between Multitasks for Large-Scale Biomedical Ontologies. Big Data Mining and Analytics, 2025, 8(5): 1148-1173. https://doi.org/10.26599/BDMA.2025.9020004

2191

Views

271

Downloads

0

Crossref

0

Web of Science

0

Scopus

1

CSCD

Received: 12 August 2024
Revised: 19 December 2024
Accepted: 14 January 2025
Published: 14 July 2025
© The author(s) 2025.

The articles published in this open access journal are distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/).