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A New Framework for Discovering Knowledge from Two-Dimensional Structured Data Using Layout Formal Graph System

机译:使用布局正式图系统从二维结构数据发现知识的新框架

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We present a new framework for discovering knowledge from two-dimensional structured data by using Inductive Logic Programming. Two-dimensional graph structured data such as image or map data are widely used for representing relations and distances between various objects. First, we define a layout term graph suited for representing two-dimensional graph structured data. A layout term graph is a pattern consisting of variables and two-dimensional graph structures. Moreover, we propose Layout Formal Graph System (LFGS) as a new logic programming system having a layout term graph as a term. LFGS directly deals with graphs having positional relations just like first order terms. Second, we show that LFGS is more powerful than Layout Graph Grammar, which is a generating system consisting of a context-free graph grammar and positional relations. This indicates that LFGS has the richness and advantage of representing knowledge about two-dimensional structured data. Finally, we design a knowledge discovery system, which uses LFGS as a knowledge representation language and refutably inductive inference as a learning method. In order to give a theoretical foundation of our knowledge discovery system, we give the set of weakly reducing LFGS programs which is a sufficiently large hypothesis space of LFGS programs and show that the hypothesis space is refutably inferable from complete data.
机译:我们通过使用电感逻辑编程,为发现从二维结构数据中发现知识的新框架。诸如图像或地图数据之类的二维图结构化数据被广泛用于表示各种对象之间的关系和距离。首先,我们定义适用于代表二维图结构化数据的布局术语图。布局术语图是由变量和二维图结构组成的模式。此外,我们提出了布局正式图系统(LFG)作为具有布局术语图作为术语的新逻辑编程系统。 LFGS直接处理具有位置关系的图表,就像一阶项一样。其次,我们表明LFGS比布局图语法更强大,它是由无与伦比的图形语法和位置关系组成的生成系统。这表明LFG具有代表了关于二维结构化数据的知识的丰富性和优势。最后,我们设计了一个知识发现系统,它使用LFG作为知识表示语言,并将其作为学习方法的归纳诱导推断。为了给出我们知识发现系统的理论基础,我们给出了LFGS程序的一个足够大的假设空间的弱化LFGS程序,并表明假设空间从完整数据中可转化可推断。

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