首页> 外文会议>CIMPA-UNESCO-INDIA School on Soft Computing Approach to Pattern Recognition and Image Processing >Soft Computing Approach to Pattern Recognition and Image Processing - Part III: Granular Computing and Case Based Reasoning - Case Base Maintenance: A Soft Computing Perspective
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Soft Computing Approach to Pattern Recognition and Image Processing - Part III: Granular Computing and Case Based Reasoning - Case Base Maintenance: A Soft Computing Perspective

机译:模式识别和图像处理的软计算方法 - 第三部分:粒度计算与基于案例的推理 - 案例基础维护:软计算透视

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Case-based Reasoning (CBR) means reasoning from prior examples. It involves retaining a memory of previous problems and their solutions and, by referencing this knowledge, new problems are compared, and the previous successful solutions are adapted and applied to the new problem situation. Therefore, the effectiveness of CBR systems largely depends on the quality of the past cases and the maintenance of its reasoning ability. Broadly speaking, case-base maintenance (CBM) activities can be divided into two types:(l) qualitative maintenance, and (2) quantitative maintenance. Qualitative maintenance refers to the assurance of the correctness, consistency and completeness of a CBR system, while quantitative maintenance refers to the problem solving efficiency of a CBR system. Experience with the growing number of deployed CBR systems has led to the awareness of their maintenance. Consequently, understanding and developing good practical CBM strategies are crucial to sustaining and improving the acceptance of CBR systems. In this chapter, the background and basic concepts of CBM will be reviewed, and followed by a brief discussion of the current research work on CBM. Next, the use of fuzzy set, rough set and fuzzy integral for maintaining a distributed case-base reasoning system is demonstrated, along with some experimental testing using an example case-base in the travel domain.
机译:基于案例的推理(CBR)意味着从先前的例子中推理。它涉及保留以前的问题及其解决方案的记忆,并且通过参考这些知识,比较新的问题,并将先前的成功解决方案适用并应用于新问题情况。因此,CBR系统的有效性在很大程度上取决于过去案例的质量和维持其推理能力。宽泛说,案例基础维护(CBM)活动可分为两种类型:(L)定性维护,(2)定量维护。定性维护是指CBR系统的正确性,一致性和完整性的保证,而定量维护是指CBR系统的解决效率。越来越多的部署的CBR系统的经验导致了对维护的认识。因此,理解和发展良好的实用CBM策略对于维持和改善CBR系统的接受至关重要。在本章中,将审查CBM的背景和基本概念,然后介绍关于CBM目前的研究工作的简要讨论。接下来,对维持分布式壳基因推理系统的模糊集合,粗糙集合和模糊积分的使用,以及使用行程域中的示例性碱基的一些实验测试。

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