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Using metarules to integrate knowledge in knowledge based systems. An application in the woodworking industry.

机译:使用元规则将知识集成到基于知识的系统中。在木工行业中的应用。

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摘要

The current study addresses the integration of knowledge obtained from Data Mining structures and models into existing Knowledge Based solutions. It presents a technique adapted from commonKADS and spiral methodology to develop an initial knowledge solution using a traditional approach for requirement analysis, knowledge acquisition, and implementation. After an initial prototype is created and verified, the solution is enhanced incorporating new knowledge obtained from Online Analytical Processing, specifically from Data Mining models and structures using meta rules. Every meta rule is also verified prior to being included in the selection and translation of rules into the Expert System notation. Once an initial iteration was completed, responses from test cases were compared using an agreement index and kappa index.;The problem domain was restricted to remake and rework operations in a cabinet making company. For Data Mining models, 8,674 cases of Price of Non Conformance (PONC) were used for a period of time of 3 months.;Initial results indicated that the technique presented sufficient formalism to be used in the development of new systems, using Trillium scale. The use of 50 additional cases randomly selected from different departments indicated that responses from the original system and the solution that incorporated new knowledge from Data Mining differed significantly. Further inspection of responses indicated that the new solution with additional 68 rules was able to answer, although with an incorrect alternative in 28 additional cases that the initial solution was not able to provide a conclusion.
机译:当前的研究致力于将从数据挖掘结构和模型中获得的知识整合到现有的基于知识的解决方案中。它提出了一种从commonKADS和螺旋方法学改编而成的技术,该技术使用传统方法来进行需求分析,知识获取和实施,从而开发出初始知识解决方案。在创建并验证了初始原型之后,将结合从在线分析处理(尤其是从使用元规则的数据挖掘模型和结构中获得)的新知识来增强解决方案。在将每个元规则包含在选择和转换成专家系统表示法之前,还应进行验证。初始迭代完成后,将使用协议索引和kappa索引比较测试用例的响应。问题域仅限于橱柜制造公司的翻新和返工操作。对于数据挖掘模型,在3个月的时间内使用了8,674箱不合格价格(PONC)。初始结果表明,该技术提供了足够的形式主义,可用于使用Trillium规模进行新系统的开发。从不同部门随机选择的另外50个案例的使用表明,原始系统的响应和合并了Data Mining新知识的解决方案存在显着差异。对答复的进一步检查表明,具有其他68条规则的新解决方案能够解决问题,尽管在另外28种情况下存在错误的替代方案,即原始解决方案无法提供结论。

著录项

  • 作者

    Villavicencio, Alvaro.;

  • 作者单位

    University of Northern Iowa.;

  • 授予单位 University of Northern Iowa.;
  • 学科 Engineering Industrial.;Artificial Intelligence.
  • 学位 D.I.T.
  • 年度 2012
  • 页码 163 p.
  • 总页数 163
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 冶金工业;
  • 关键词

  • 入库时间 2022-08-17 11:42:42

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