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A compact firefly algorithm for matching biomedical ontologies

机译:一种用于匹配生物医学本体的紧凑型萤火虫算法

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Biomedical ontologies have gained particular relevance in the life science domain due to its prominent role in representing knowledge in this domain. However, the existing biomedical ontologies could define the same biomedical concept in different ways, which yields the biomedical ontology heterogeneous problem. To implement the inter-operability among the biomedical ontologies, it is critical to establish the semantic links between heterogenous biomedical concepts, so-called biomedical ontology matching. Since modeling the ontology matching problem is a complex and time-consuming task, swarm intelligent algorithm (SIA) becomes a state-of-the-art methodology for solving this problem. However, when addressing the biomedical ontology matching problem, the existing SIA-based matchers tend to be inefficient due to biomedical ontology's large-scale concepts and complex semantic relationships. In this work, we propose a compact firefly algorithm (CFA), where the explicit representation of the population is replaced by a probability distribution and two compact movement operators are presented to save the memory consumption and runtime of the population-based SIAs. We exploit the anatomy track, disease and phenotype track and biodiversity and ecology track from the ontology alignment evaluation initiative (OAEI) to test CFA-based matcher's performance. The experimental results show that CFA can improve the FA-based matcher's memory consumption and runtime by, respectively, 68.92% and 38.97% on average, and its results significantly outperform other SIA-based matchers and OAEI's participants.
机译:由于其在这个领域的知识中的突出作用,生物医学本体在生命科学领域获得了特殊相关性。然而,现有的生物医学本体可以以不同的方式定义相同的生物医学概念,从而产生生物医学本体的异构问题。为了在生物医学本体中实现可操作性,建立异质生物医学概念,所谓的生物医学本体匹配之间的语义链接至关重要。由于本体匹配问题的建模是复杂且耗时的任务,因此智能算法(SIA)成为解决这个问题的最先进的方法。然而,在解决生物医学本体匹配问题时,由于生物医学本体的大规模概念和复杂的语义关系,现有的基于SIA的匹配往往是效率低下。在这项工作中,我们提出了一种紧凑的萤火虫算法(CFA),其中群体的显式表示由概率分布替换,并提出了两个紧凑的移动运算符以节省基于人口的群体的存储器消耗和运行时。我们利用本体对齐评估倡议(OAEI)的解剖轨迹,疾病和表型轨​​道和生态多样性和生态轨道来测试基于CFA的匹配的匹配的性能。实验结果表明,CFA可以分别改善基于FA的匹配器的内存消耗和运行时间,平均值68.92%和38.97%,其结果显着优于其他基于SIA的匹配者和OAEI的参与者。

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