Global optimisation of neural network models via sequential sampling-importance resampling

J. F. G. D. Freitas, S. E. Johnson, M. Niranjan, A. Gee
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引用次数: 7

Abstract

We propose a novel strategy for training neural networks using sequential Monte Carlo algorithms. This global optimisation strategy allows us to learn the probability distribution of the network weights in a sequential framework. It is well suited to applications involving on-line, nonlinear or non-stationary signal processing. We show how the new algorithms can outperform extended Kalman filter (EKF) training.
神经网络模型的序贯抽样-重要性重抽样全局优化
我们提出了一种使用时序蒙特卡罗算法训练神经网络的新策略。这种全局优化策略使我们能够在序列框架中学习网络权重的概率分布。它非常适合于涉及在线、非线性或非平稳信号处理的应用。我们展示了新算法如何优于扩展卡尔曼滤波(EKF)训练。
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