A local learning algorithm for random weights networks
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摘要
Robust modelling is significant to deal with complex systems with uncertainties. This paper aims to develop a novel learning algorithm for training regularized local random weights networks (RWNs). The learner model, terms as RL-RWN, is built on regularized moving least squares method and generalizes the solution obtained from the standard least square technique. Simulations are carried out using two benchmark datasets, including Auto-MPG data and surface reconstruction data. Results demonstrate that our proposed RL-RWN outperforms the original RWN and radial basis function networks.
论文关键词:Random weights networks,Local learning algorithm,Regularization model,Moving least squares method,Feedforward neural networks
论文评审过程:Received 23 August 2014, Revised 5 November 2014, Accepted 12 November 2014, Available online 20 November 2014.
论文官网地址:https://doi.org/10.1016/j.knosys.2014.11.014