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Rough sets for adapting wavelet neural networks as a new classifier system

机译:适应小波神经网络的粗糙集作为新的分类器系统

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摘要

Classification is an important theme in data mining. Rough sets and neural networks are two techniques applied to data mining problems. Wavelet neural networks have recently attracted great interest because of their advantages over conventional neural networks as they are universal approximations and achieve faster convergence. This paper presents a hybrid system to extract efficiently classification rules from decision table. The neurons of such hybrid network instantiate approximate reasoning knowledge gleaned from input data. The new model uses rough set theory to help in decreasing the computational effort needed for building the network structure by using what is called reduct algorithm and a rules set (knowledge) is generated from the decision table. By applying the wavelets, frequencies analysis, rough sets and dynamic scaling in connection with neural network, novel and reliable classifier architecture is obtained and its effectiveness is verified by the experiments comparing with traditional rough set and neural networks approaches.
机译:分类是数据挖掘中的重要主题。粗糙集和神经网络是应用于数据挖掘问题的两种技术。小波神经网络由于具有通用逼近和更快的收敛性而比常规神经网络更具优势,因此近来引起人们极大的兴趣。本文提出了一种从决策表中有效提取分类规则的混合系统。这种混合网络的神经元实例化从输入数据中收集的近似推理知识。新模型使用粗糙集理论,通过使用所谓的归约算法来帮助减少构建网络结构所需的计算量,并从决策表中生成规则集(知识)。通过与神经网络相结合应用小波,频率分析,粗糙集和动态缩放,获得了新颖可靠的分类器架构,并与传统的粗糙集和神经网络方法进行了比较,通过实验验证了其有效性。

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