An RBF neural network based on improved black widow optimization algorithm for classification and regression problems

一种基于改进黑寡妇优化算法的RBF神经网络,用于分类和回归问题

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Abstract

INTRODUCTION: Regression and classification are two of the most fundamental and significant areas of machine learning. METHODS: In this paper, a radial basis function neural network (RBFNN) based on an improved black widow optimization algorithm (IBWO) has been developed, which is called the IBWO-RBF model. In order to enhance the generalization ability of the IBWO-RBF neural network, the algorithm is designed with nonlinear time-varying inertia weight. DISCUSSION: Several classification and regression problems are utilized to verify the performance of the IBWO-RBF model. In the first stage, the proposed model is applied to UCI dataset classification, nonlinear function approximation, and nonlinear system identification; in the second stage, the model solves the practical problem of power load prediction. RESULTS: Compared with other existing models, the experiments show that the proposed IBWO-RBF model achieves both accuracy and parsimony in various classification and regression problems.

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