Two-step filtering datamining method integrating case-based reasoning and rule induction

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摘要

Case-based reasoning (CBR) methods are applied to various target problems on the supposition that previous cases are sufficiently similar to current target problems, and the results of previous similar cases support the same result consistently. However, these assumptions are not applicable for some target cases. There are some target cases that have no sufficiently similar cases, or if they have, the results of these previous cases are inconsistent. That is, the appropriateness of CBR is different for each target case, even though they are problems in the same domain. Thus, applying CBR to whole datasets in a domain is not reasonable. This paper presents a new hybrid datamining technique called two-step filtering CBR and rule induction (TSFCR), which dynamically selects either CBR or RI for each target case, taking into consideration similarities and consistencies of previous cases. We apply this method to three medical diagnosis datasets and one credit analysis dataset in order to demonstrate that TSFCR outperforms the genuine CBR and RI.

论文关键词:Hybrid method,Datamining,Case-based reasoning,Rule induction,Artificial intelligence,Credit analysis,Medical diagnosis

论文评审过程:Available online 17 November 2007.

论文官网地址:https://doi.org/10.1016/j.eswa.2007.10.036