Fuzzy relational learning: A new approach to case-based reasoning

Author(s):  
Ning Xiong ◽  
Liangjun Ma ◽  
Shouchuan Zhang
2020 ◽  
Vol 2 (7) ◽  
Author(s):  
Shiva Asadianfam ◽  
Hoshang Kolivand ◽  
Sima Asadianfam

2020 ◽  
Vol 11 (1) ◽  
pp. 292
Author(s):  
Ľudmila Pusztová ◽  
František Babič ◽  
Ján Paralič

The paper presents a new approach to effectively support the adaptation phases in the case-based reasoning (CBR) process. The use of the CBR approach in DSS (Decision Support Systems) can help the doctors better understand existing knowledge and make personalized decisions. CBR simulates human thinking by reusing previous solutions applied to past similar cases to solve new ones. The proposed method improves the most challenging part of the CBR process, the adaptation phase. It provides diagnostic suggestions together with explanations in the form of decision rules so that the physician can more easily decide on a new patient’s diagnosis. We experimentally tested and verified our semi-automatic adaptation method through medical data representing patients with cardiovascular disease. At first, the most appropriate diagnostics is presented to the doctor as the most relevant diagnostic paths, i.e., rules—extracted from a decision tree model. The generated rules are based on existing patient records available for the analysis. Next, the doctor can consider these results in two ways. If the selected diagnostic path entirely covers the actual new case, she can apply the proposed diagnostic path to diagnose the new case. Otherwise, our system automatically suggests the minimal rules’ modification alternatives to cover the new case. The doctor decides if the suggested modifications can be accepted or not.


Author(s):  
E. C. C. TSANG ◽  
X. Z. WANG

Case-based maintenance is an important issue in Case-Based Reasoning (CBR) System. Generally speaking, the larger the case-base, the more accurate the solution. However, if the case base is too large, it may include many redundant cases and the case retrieve will not be effective. Moreover redundant cases will affect the solution accuracy. Therefore, removing redundant cases is a fundamental issue in maintaining CBR systems. In this paper, a new approach based on the Generalization Capability of cases to select the representative cases for Case-Based Maintenance is proposed. Using this method, most redundant cases can be deleted and the most representative cases can be identified and retained. The experiments show that the proposed method can greatly remove the redundant cases as well as preserve a satisfying degree of accuracy of solutions when it is used for classification tasks.


Author(s):  
Timo Ahola ◽  
◽  
Kauko Leiviskä

This paper proposes a new approach for monitoring the the paper web break tendency in modern paper machines. The approach combines linguistic equations and fuzzy logic in a case-based reasoning framework. The development is based on actual mill data and simulations, and early prototyping is used to validate the approach in practice. The system has been tested on two Finnish paper machines with encouraging results showing good possibility for actual mill-scale application.


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