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Automatic generation of a metamodel from an existing knowledge base to assist the development of a new analogous knowledge base.

机译:从现有知识库自动生成元模型以帮助开发新的类似知识库。

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摘要

Knowledge acquisition is a key step in the development of knowledge-based systems and methods have been proposed to help elicitating a domain-specific task model from a generic task model. We explored how an existing validated knowledge base (KB) represented by a decision tree could be automatically processed to infer a higher level domain-specific task model. On-codoc is a guideline-based decision support system applied to breast cancer therapy. Assuming task identity and ontological proximity between breast and lung cancer domains, the generalization of the breast can-cer KB should allow to build a metamodel to serve as a guide for the elaboration of a new specific KB on lung cancer. Two types of parametrized generalization methods based on tree structure simplification and ontological abstraction were used. We defined a similarity distance and a generalization coefficient to select the best metamodel identified as the closest to the original decision tree of the most generalized metamodels.
机译:知识获取是开发基于知识的系统的关键步骤,并且已经提出了一些方法来帮助从通用任务模型中引出特定领域的任务模型。我们探索了如何自动处理由决策树表示的现有经过验证的知识库(KB),以推断出更高级别的特定于域的任务模型。 On-codoc是适用于乳腺癌治疗的基于指南的决策支持系统。假设乳腺癌和肺癌域之间的任务相同以及在本体论上的接近性,乳腺癌基因库的泛化应该可以建立一个元模型,以作为制定新的肺癌特异性库的指南。使用了两种基于树结构简化和本体抽象的参数化泛化方法。我们定义了一个相似距离和一个泛化系数,以选择确定为最接近最泛化元模型的原始决策树的最佳元模型。

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