Article ID Journal Published Year Pages File Type
406528 Neurocomputing 2014 9 Pages PDF
Abstract

A popular and feasible approach to determine the appropriate size of a neural network is to remove unnecessary connections from an oversized network. The advantage of L1/2 regularization has been recognized for sparse modeling. However, the nonsmoothness of L1/2 regularization may lead to oscillation phenomenon. An approach with smoothing L1/2 regularization is proposed in this paper for Takagi–Sugeno (T–S) fuzzy models, in order to improve the learning efficiency and to promote sparsity of the models. The new smoothing L1/2 regularizer removes the oscillation. Besides, it also enables us to prove the weak and strong convergence results for T–S fuzzy neural networks with zero-order. Furthermore, a relationship between the learning rate parameter and the penalty parameter is given to guarantee the convergence. Simulation results are provided to support the theoretical findings, and they show the superiority of the smoothing L1/2 regularization over the original L1/2 regularization.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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