非相干映射修复中两焦点最小的诊断过程

Inne Gartina Husein, B. Sitohang, Saiful Akbar
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引用次数: 4

摘要

本体匹配是在两个本体的语义相关实体之间寻找对应关系的过程。大多数匹配系统通过比较对应与参考对齐来进行评估。自2010年以来,另一种方法被用于测量基于逻辑的对应或映射,称为非相干映射测量。映射越不连贯,映射的质量就越低。非相干映射修复通过去除不需要的映射,将映射中的非相干恢复到相干状态。去除不需要的映射以恢复相干状态的过程称为诊断过程。由于映射是支持数据集成和交换的非常重要的来源,因此应该尽可能少地进行诊断。我们提出了两个焦点最小利用全局新技术来修复非相干映射。这种方法应该(1)通过最小化移除的映射数量来确保对输入对齐的影响最小;(2)最小化被移除映射置信值的平均值。关于最小诊断的下一步研究是在现实世界中寻找合适的方法来实现全球新技术的两个焦点最小。
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Diagnosis process with two focuses minimal in incoherent mapping repair
Ontology Matching is a process to find correspondences between semantically related entities of two ontologies. Most matching systems do evaluation by comparing the correspondences with reference alignment. Since 2010 another method has been used to measure a logic-based of correspondence or mapping, called incoherent mapping measurement. The more incoherent of the mapping the lower quality of mapping. Incoherent mapping repair will restore the incoherent to coherent condition in mapping, by removing unwanted mapping. The process of removing unwanted mapping to restore the coherent condition is called diagnosis process. Since mappings are very important sources to support data integration and exchange, then diagnosis should be done as minimal as possible. We propose two focuses minimal using global new technique to repair the incoherent mapping. This approach should (1) ensure minimal impact on the input alignment by minimizing the number of mapping removed; and (2) minimize the average of confidence values of the mapping removed. The next study about minimal diagnosis is finding the right method to implement the two focuses minimal with global new techniques in the real world.
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