从本体中学习常见的有意义结构

Liu Yang, Guojie Li, Zhongzhi Shi
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引用次数: 2

摘要

我们提出了领域相似的本体之间存在共同意义结构的假设,提出这一假设的初衷是为了充分利用现有本体中的结构信息,从而使本体领域受益。为了验证这一假设,我们给出了MICISO (maximum isomorphic common induced sub-ontology,最大同构公共诱导子本体)候选对象的精确定义。在此假设和定义的基础上,我们提出了一种新的数据挖掘问题,称为MICISO挖掘,其目的是从本体中学习,发现MICISO,并进一步推荐共同的有意义结构。我们还提供了一种MICISO挖掘算法,并在此基础上开发了一种实用的挖掘和检查此类结构的工具。使用该工具,该算法使用了相当多对现有本体来实现,并且有趣的有意义的结果支持了我们的假设。因此,我们认为该假设得到了初步验证。我们认为我们的工作为本体论领域激发了一种新的有前途的思维——研究现有的本体论以寻找有用的东西。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from ontologies for common meaningful structures
We put forward a hypothesis that there exist common meaningful structures among ontologies whose domains are analogous to each other The initial motivation of our hypothesis is to make full use of the structural information in existing ontologies, in order to benefit the domain of ontology. To verify the hypothesis we give a precise definition of the candidate of the common meaningful structure called MICISO (maximum isomorphic common induced sub-ontology). Based on the hypothesis and the definition we present a novel data mining problem called MICISO mining, whose aim is learning from ontologies to find out MICISOs and further recommend the common meaningful structures. We also provide an algorithm for MICISO mining, based on which we have developed a practical tool for mining and checking such structures. With the tool, the algorithm is implemented with quite a few pairs of existing ontologies, and the interesting meaningful results support our hypothesis. Thus we consider that the hypothesis is preliminarily verified. We suppose that our work sparks a novel promising thinking for the domain of ontology -to study existing ontologies for useful things.
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