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Using Compact Coevolutionary Algorithm for Matching Biomedical Ontologies

机译:使用紧凑型协同进化算法匹配生物医学本体

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摘要

Over the recent years, ontologies are widely used in various domains such as medical records annotation, medical knowledge representation and sharing, clinical guideline management, and medical decision-making. To implement the cooperation between intelligent applications based on biomedical ontologies, it is crucial to establish correspondences between the heterogeneous biomedical concepts in different ontologies, which is so-called biomedical ontology matching. Although Evolutionary algorithms (EAs) are one of the state-of-the-art methodologies to match the heterogeneous ontologies, huge memory consumption, long runtime, and the bias improvement of the solutions hamper them from efficiently matching biomedical ontologies. To overcome these shortcomings, we propose a compact CoEvolutionary Algorithm to efficiently match the biomedical ontologies. Particularly, a compact EA with local search strategy is able to save the memory consumption and runtime, and three subswarms with different optimal objectives can help one another to avoid the solution’s bias improvement. In the experiment, two famous testing cases provided by Ontology Alignment Evaluation Initiative (OAEI 2017), i.e. anatomy track and large biomed track, are utilized to test our approach’s performance. The experimental results show the effectiveness of our proposal.
机译:近年来,本体被广泛用于各个领域,例如病历注释,医学知识表示和共享,临床指南管理和医学决策。为了实现基于生物医学本体的智能应用程序之间的协作,至关重要的是在不同本体中建立异构生物医学概念之间的对应关系,这就是所谓的生物医学本体匹配。尽管进化算法(EA)是匹配异构本体的最先进的方法之一,但是巨大的内存消耗,较长的运行时间以及解决方案的偏差改进仍使它们无法有效地匹配生物医学本体。为了克服这些缺点,我们提出了一种紧凑的CoEvolutionary算法来有效地匹配生物医学本体。特别是,具有本地搜索策略的紧凑型EA可以节省内存消耗和运行时间,而具有不同最佳目标的三个子群可以互相帮助,避免解决方案的偏差得到改善。在实验中,本体对齐评估计划(OAEI 2017)提供了两个著名的测试案例,即解剖轨迹和大型生物医学轨迹,以测试我们的方法的性能。实验结果表明了该建议的有效性。

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