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Qualitative comparison of graph-based and logic-based multi-relational data mining

机译:基于图和基于逻辑的多关系数据挖掘的定性比较

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The goal of this paper is to generate insights about the differences between graph-based and logic-based approaches to multi-relational data mining by performing a case study of graph-based system, Subdue and the inductive logic programming system, CProgol. We identify three key factors for comparing graph-based and logic-based multi-relational data mining; namely, the ability to discover structurally large concepts, the ability to discover semantically complicated concepts and the ability to effectively utilize background knowledge. We perform an experimental comparison of Subdue and CProgol on the Mutagenesis domain and various artificially generated Bongard problems. Experimental results indicate that Subdue can significantly outperform CProgol while discovering structurally large multi-relational concepts. It is also observed that CProgol is better at learning semantically complicated concepts and it tends to use background knowledge more effectively than Subdue.
机译:本文的目的是通过对基于图的系统Subdue和归纳逻辑编程系统CProgol进行案例研究,以获取有关基于图的方法和基于逻辑的多关系数据挖掘方法之间差异的见解。我们确定了比较基于图和基于逻辑的多关系数据挖掘的三个关键因素。即发现结构上较大的概念的能力,发现语义上复杂的概念的能力以及有效利用背景知识的能力。我们在诱变域和各种人工生成的邦加德问题上进行了Subdue和CProgol的实验比较。实验结果表明,Subdue可以显着胜过CProgol,同时发现结构较大的多关系概念。还可以观察到CProgol擅长学习语义复杂的概念,并且比Subdue倾向于更有效地利用背景知识。

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