首页> 外文学位 >Soft computing techniques for case knowledge extraction in CBR system development.
【24h】

Soft computing techniques for case knowledge extraction in CBR system development.

机译:CBR系统开发中用于案例知识提取的软计算技术。

获取原文
获取原文并翻译 | 示例

摘要

The performance of a case-based reasoning (CBR) system depends on its problem-solving quality, efficiency and competence. In a case base, a case can be defined as a piece of contextual and specific knowledge. The more the cases, the better the competence (coverage) of the problem domain, and therefore larger CBR systems tend to provide better solutions than the smaller ones. However, this is not always true because not all the cases collected in the system are useful for problem solving. For example, cases may be in conflict with each other; many cases may be redundant because of their close similarity; some cases may be noises in the system because they are not offering any help in the problem solving, and sometimes may even cause confusion. Another important aspect of CBR system is its efficiency (or speed) in providing helps. The purpose of this research is to examine closely these two aspects, and develop feasible computational techniques that will facilitate the development of CBR systems. This research question leads us to think deeply what constitute the problem solving ability of a CBR system; and also how to strike a balance between efficiency and problem-solving quality. Furthermore, in many real world situations, data and information collected are always incomplete, uncertain and vague, thus, the use of soft computing principles to achieve tractability, robustness and low solution cost is inevitable.; Having the above understanding in mind, we then built up a set of soft computing based techniques for the extraction of case knowledge from data. They aim at (i) removing the redundancy and noises; (ii) reducing the size of the case base; and (iii) preserving the problem solving ability (or competence in CBR terminology). The developed algorithms deal with the processes of feature selection and reduction; similarity learning among features; case selection and case generation; and competence model development. Specific concepts and techniques, like approximate reducts; GA-based case-matching; redefined case coverage and reachability measurement; boundary cases with NN guiding principle; fast rough set-based feature reduction; rough LVQ based case generation; fuzzy integral-based case base competence model, are developed, tested and compared with traditional methods such as KPCA and SVM. The experimental results are very promising, and support our objective of trying to develop a compact and competent CBR system through case knowledge extraction.
机译:基于案例的推理(CBR)系统的性能取决于其解决问题的质量,效率和能力。在案例库中,案例可以定义为上下文和特定知识的一部分。案例越多,问题域的能力(覆盖范围)就越好,因此,较大的CBR系统倾向于提供比较小的CBR系统更好的解决方案。但是,这并不总是正确的,因为并非系统中收集的所有案例都可用于解决问题。例如,案件可能彼此冲突;由于它们的相似性,许多情况可能是多余的;在某些情况下,可能是系统中的噪音,因为它们无法为解决问题提供任何帮助,有时甚至会造成混乱。 CBR系统的另一个重要方面是其提供帮助的效率(或速度)。本研究的目的是仔细研究这两个方面,并开发可行的计算技术,以促进CBR系统的开发。这个研究问题使我们深入思考什么构成了CBR系统的问题解决能力。以及如何在效率和解决问题的质量之间取得平衡。此外,在许多现实世界中,收集的数据和信息总是不完整,不确定和模糊的,因此,不可避免地要使用软计算原理来实现易处理性,鲁棒性和较低的解决方案成本。考虑到以上理解,我们然后建立了一套基于软计算的技术,用于从数据中提取案例知识。他们的目的是(i)消除冗余和噪音; (ii)减少案件库的规模; (iii)保留解决问题的能力(或CBR术语的能力)。所开发的算法处理特征选择和归约的过程;特征之间的相似性学习;案例选择和案例生成;和能力模型开发。具体概念和技术,例如近似还原;基于GA的案例匹配;重新定义了案例覆盖率和可达性度量;具有NN指导原则的边界案例;基于粗糙集的快速特征缩减;粗略的基于LVQ的案例生成;基于模糊积分的案例库胜任力模型被开发,测试并与传统方法如KPCA和SVM相比较。实验结果非常有希望,并支持我们通过案例知识提取来开发紧凑而功能强大的CBR系统的目标。

著录项

  • 作者

    Li, Yan.;

  • 作者单位

    Hong Kong Polytechnic University (People's Republic of China).;

  • 授予单位 Hong Kong Polytechnic University (People's Republic of China).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号