一种基于重心的模糊插值推理方法

Zhiheng Huang, Q. Shen
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引用次数: 56

摘要

插值推理方法不仅有助于降低模糊模型的复杂性,而且使基于稀疏规则的系统推理成为可能。本文利用模糊集的重心(COG)性质,提出了一种插值推理方法。该方法首先通过对两个给定相邻规则的操作构造新的推理规则,然后利用相似度信息将中间推理结果转化为最终推导结论。引入两种变换操作来支持这种推理,使模糊集的COG在变换前后保持不变。实验对比的结果反映了这项工作的成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new fuzzy interpolative reasoning method based on center of gravity
Interpolative reasoning methods do not only help reduce the complexity of fuzzy models but also make inference in sparse-rule based systems possible. This paper presents an interpolative reasoning method by exploiting the center of gravity (COG) property of the fuzzy sets concerned. The method works by first constructing a new inference rule via manipulating two given adjacent rules, and then by using similarity information to convert the intermediate inference results into the final derived conclusion. Two transformation operations are introduced to support such reasoning, which allow the COG of a fuzzy set to remain unaltered before and after the transformation. Results of experimental comparisons are provided to reflect the success of this work.
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