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Variable coded hierarchical fuzzy classification model using DNA coding and evolutionary programming

机译:利用DNA编码和进化规划的可变编码分层模糊分类模型

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In this study, we propose a new variable coded hierarchical fuzzy model (VCHFM) for handling classification problems. The proposed hierarchical framework classification model synergistically integrates the standard fuzzy inference system and DNA coding with supervised learning. The VCHFM automatically generates fuzzy rules from numerical data and membership functions using both the feature extraction unit and the inference unit. Furthermore, three modified algorithms are employed by the proposed VCHFM. The implementation of this model comprises four stages. First, a genetic algorithm procedure is used to determine the distribution of fuzzy sets for each feature variable in the feature extraction unit. Second, the membership functions are adjusted by DNA computing. Third, chaotic particle swarm optimization is used to regulate the weighting grade of the principal output node in the inference unit. Finally, a multi-objective optimum fitness function is used to ensure the best classification rate with the minimum number and length of rules. We validated the proposed VCHFM by classifying five benchmark datasets: the UCI Pima Indians Diabetes, Glass, Wisconsin Breast Cancer, Wine, and Iris datasets. The computer simulation results demonstrate that the proposed VCHFM can obtain a sufficiently high classification rate, unlike other models proposed in previous studies.
机译:在这项研究中,我们提出了一种新的可变编码分层模糊模型(VCHFM),用于处理分类问题。提出的层次框架分类模型将标准模糊推理系统和DNA编码与监督学习协同集成。 VCHFM使用特征提取单元和推理单元自动根据数值数据和隶属函数生成模糊规则。此外,提出的VCHFM采用了三种修改的算法。该模型的实施包括四个阶段。首先,使用遗传算法过程来确定特征提取单元中每个特征变量的模糊集分布。其次,隶属函数通过DNA计算进行调整。第三,混沌粒子群算法用于调节推理单元中主输出节点的加权等级。最后,使用多目标最优适应度函数以最小的规则数量和长度来确保最佳的分类率。我们通过对五个基准数据集进行分类来验证所提议的VCHFM:UCI皮马印第安人糖尿病,玻璃,威斯康星州乳腺癌,葡萄酒和虹膜数据集。计算机仿真结果表明,与先前研究中提出的其他模型不同,所提出的VCHFM可以获得足够高的分类率。

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