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Weighted MCRDR: Deriving Information about Relationships between Classifications in MCRDR

机译:加权MCRDR:派生有关MCRDR中类别之间关系的信息

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Multiple Classification Ripple Down Rules (MCRDR) is a knowledge acquisition technique that produces representations, or knowledge maps, of a human expert's knowledge of a particular domain. However, work on gaining an understanding of the knowledge acquired at a deeper meta-level or using the knowledge to derive new information is still in its infancy. This paper will introduce a technique called Weighted MCRDR (WM), which looks at deriving and learning information about the relationships between multiple classifications within MCRDR by calculating a meaningful rating for the task at hand. This is not intended to reduce the knowledge acquisition effort for the expert. Rather, it is attempting to use the knowledge received in the MCRDR knowledge map to derive additional information that can allow improvements in functionality of MCRDR in many problem domains. Preliminary testing shows that there exists a strong potential for WM to quickly and effectively learn meaningful weightings.
机译:多重分类降低规则(MCRDR)是一种知识获取技术,可产生人类专家在特定领域中的知识的表示形式或知识图。但是,在更深的元层次上获得对知识的了解或使用知识来获得新信息的工作仍处于起步阶段。本文将介绍一种称为加权MCRDR(WM)的技术,该技术通过为手头任务计算有意义的等级,着眼于推导和学习有关MCRDR中多个类别之间关系的信息。这并不是要减少专家的知识获取工作量。而是,它试图使用在MCRDR知识图中接收到的知识来推导可以在许多问题领域中改进MCRDR功能的其他信息。初步测试表明,WM具有快速有效地学习有意义的权重的强大潜力。

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