波斯语本体匹配:挑战、数据集生成和相似度组合

H. Tabealhojeh, B. Shadgar, M. Tashakori
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摘要

本文对波斯语本体匹配进行了实践研究。本体匹配是语义网发展的关键。虽然对波斯语本体的开发进行了许多尝试,但波斯语本体匹配问题仍未得到解决。本文讨论了波斯语本体匹配所面临的挑战。设计和开发高效本体匹配器的最重要的先决条件之一是标准基准数据集,它允许在不同的匹配器之间进行公平的评估和比较。首先,我们为波斯语本体匹配生成了一个基准数据集,我们将其命名为PersianFarm。PersianFarm是根据OntoFarm开发的,OntoFarm是本体对齐评估计划(OAEI)的多语言数据集。它由七个波斯语本体和它们之间的11个参考排列组成。接下来,我们针对PersianFarm数据集评估了广泛的相似性指标,如基于字符串的、结构的和基于上下文的相似性。最后,选择并组合不同的相似性度量来开发适当的波斯语本体匹配器。结果报告为f测量率,表明相似度的混合取得了合理的结果,以匹配概念。
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Persian ontology matching: Challenges, dataset generation and similarity combination
This paper presents a practical study of the Persian ontology matching. Ontology matching has a key role to develop the semantic web. Although many attempts are done to develop Persian ontologies, but the Persian ontology matching problem is still unresolved. This paper addresses the challenges of the Persian ontology matching. One of the most important prerequisites of design and develop efficient ontology matchers is standard benchmark datasets that allow a fair evaluation and comparison between different matchers. First, we generated a benchmark dataset for Persian ontology matching that we named it PersianFarm. PersianFarm is developed according to OntoFarm, the multilingual dataset of the Ontology Alignment Evaluation Initiative (OAEI). It consists of seven Persian ontologies and eleven reference alignments between them. Next, we evaluate a wide range of similarity metrics such as string based, structural and context-based similarities against PersianFarm dataset. Finally, different similarity metrics have been selected and combined to develop an appropriate Persian ontology matcher. The results that reported as F-measure rate, show that the mixture of similarities achieved reasonable results to match the concepts.
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