Using Declarative Specifications of Domain Knowledge for Descriptive Data Mining

作者: Martin Atzmueller , Dietmar Seipel

DOI: 10.1007/978-3-642-00675-3_10

关键词: DocumentationKnowledge-based systemsDomain knowledgeComputer scienceProcedural knowledgeKnowledge extractionSoftware engineeringPrologBody of knowledgeKnowledge baseData mining

摘要: Domain knowledge is a valuable resource for improving the quality of results data mining methods. In this paper, we present methodological approach providing domain in declarative manner : We utilize Prolog base with facts specification properties ontological concepts and rules derivation further ad-hoc relations between these concepts. This enhances documentation , extendability standardization applied knowledge. Furthermore, presented also provides potential automatic verification improved maintenance options respect to used

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