模糊规则库局部进化学习中的隶属度函数调优

D. Spiegel, T. Sudkamp
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引用次数: 1

摘要

模糊规则库的局部进化生成在整个输入空间中对局部区域进行独立搜索,并结合局部结果生成全局模型。提出了一种兼容模糊规则库局部进化生成的规则库调优策略。基于训练数据的分布和值,通过修改输入域的分解来完成规则基调优。局部调优算法必须保持种群中竞争规则之间的对应关系。已经开发了一个实验套件来展示使用规则基调优进行模型优化的潜力。特别令人感兴趣的是规则库调优的能力,以补偿稀疏数据的影响。
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Tuning membership functions in local evolutionary learning of fuzzy rule bases
The local evolutionary generation of fuzzy rule bases employs independent searches in local regions throughout the input space and combines the local results to produce a global model. The paper presents a rule base tuning strategy that is compatible with the local evolutionary generation of fuzzy rule bases. Rule base tuning is accomplished by modifying the decomposition of the input domain based on the distribution and values of the training data. A local tuning algorithm must maintain a correspondence between competing rules in the population. An experimental suite has been developed to exhibit the potential for model optimization using rule base tuning. of particular interest is the ability of rule base tuning to compensate for the effects of sparse data.
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