A Rough RBF Neural Networks Optimized by the Genetic Algorithm

The large-scale data parallelism processing is an inherent characteristic of artificial neural networks, but the networks bring the efficiency problems of data processing. As one of the artificial neural networks, Radial Basis Function (RBF) neural networks have the same problem. Therefore, how to reduce the scale of data to improve the efficiency of data processing has been a hot issue among the artificial intelligence scholars. Based on the traditional RBF neural networks, this paper puts forward a method which determines the important degree of the sample attributes based on knowledge entropy of Rough set by analyzing the relationship between the knowledge entropy and the weight of the sample attributes, and assesses the importance of the sample attributes between the input layer and the hidden layer, namely the attribution reduction, so as to achieve reduce the scale of data processing. The ultimate aim of training RBF neural networks is to seek a set of suitable networks parameters which makes the sample output error achieve the minimum or required accuracy, while Genetic Algorithm (GA) has the properties of finding out the optimal solution through multiplepoint random search in the solution space, so Genetic Algorithm is used to optimize the centers, the widths and the weights between the hidden layer and the output layer of RBF neural networks in training the networks. Finally, a model about A Rough RBF Neural Networks Optimized by the Genetic Algorithm (GA-RS-RBF) is proposed in this paper. The simulation results show that the rough RBF neural network optimized by the Genetic Algorithm is better than the traditional RBF neural networks in classification about Iris datasets.

[1]  Song Xue-feng Identification of Industry Clusters Life Cycle Based on Integration of Rough Sets and Neural Network , 2010 .

[2]  Zhu Juan Self-adaptive K-means algorithm based on determination of similarity between clusters , 2010 .

[3]  An Li-ping,et al.  Multi-attribute decision analysis based on rough set theory , 2005 .

[4]  Ivo Düntsch,et al.  Uncertainty Measures of Rough Set Prediction , 1998, Artif. Intell..

[5]  S. K. Michael Wong,et al.  Rough Sets: Probabilistic versus Deterministic Approach , 1988, Int. J. Man Mach. Stud..

[6]  Guoqiang Cai,et al.  Modelling of Electrohydraulic System Using RBF Neural Networks and Genetic Algorithm , 2010, J. Convergence Inf. Technol..

[7]  Ye Ming-quan The Research of Classfication Model Based on Rough Sets and RBF Neural Network , 2008 .

[8]  Zou Jinhui Method of fault diagnosis for power transformer based on rough set theory , 2004 .

[9]  Mao Hong-bao A New Method of Weights Allocation to Case Feature Attributes Based on Rough Set Theory , 2010 .

[10]  Huang Ding Means of Weights Allocation with Multi-Factors Based on Impersonal Message Entropy , 2003 .

[11]  Meng Joo Er,et al.  High-speed face recognition based on discrete cosine transform and RBF neural networks , 2005, IEEE Transactions on Neural Networks.

[12]  Wutao Chen,et al.  Model-free Gene Selection Using Genetic Algorithms , 2011 .

[13]  Paramasivan Saratchandran,et al.  Performance evaluation of a sequential minimal radial basis function (RBF) neural network learning algorithm , 1998, IEEE Trans. Neural Networks.