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The Impact of Imbalanced Training Data on Local Matching Learning of Ontologies

机译:训练数据不平衡对本体局部匹配学习的影响

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Matching learning corresponds to the combination of ontology matching and machine learning techniques. This strategy has gained increasing attention in recent years. However, state-of-the-art approaches implementing matching learning strategies are not well-tailored to deal with imbalanced training sets. In this paper, we address the problem of the imbalanced training sets and their impacts on the performance of the matching learning in the context of aligning biomedical ontologies. Our approach is applied to local matching learning, which is a technique used to divide a large ontology matching task into a set of distinct local sub-matching tasks. A local matching task is based on a local classifier built using its balanced local training set. Thus, local classifiers discover the alignment of the local sub-matching tasks. To validate our approach, we propose an experimental study to analyze the impact of applying conventional resampling techniques on the quality of the local matching learning.
机译:匹配学习对应于本体匹配和机器学习技术的结合。近年来,这种策略已引起越来越多的关注。但是,实施匹配学习策略的最新方法无法很好地解决不平衡的训练集。在本文中,我们解决了训练集不平衡的问题及其在匹配生物医学本体的情况下对匹配学习性能的影响。我们的方法应用于局部匹配学习,这是一种用于将大型本体匹配任务划分为一组不同的局部子匹配任务的技术。本地匹配任务基于使用其均衡的本地训练集构建的本地分类器。因此,局部分类器发现局部子匹配任务的对齐。为了验证我们的方法,我们提出了一项实验研究,以分析应用常规重采样技术对本地匹配学习质量的影响。

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