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Sequential Monte Carlo Methods to Train Neural Network Models

机译:序列蒙特卡洛方法训练神经网络模型

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摘要

We discuss a novel strategy for training neural networks using sequential Monte Carlo algorithms and propose a new hybrid gradient descent / sampling importance resampling algorithm (HySIR). In terms of computational time and accuracy, the hybrid SIR is a clear improvement over conventional sequential Monte Carlo techniques. The new algorithm may be viewed as a global optimization strategy that allows us to learn the probability distributions of the network weights and outputs in a sequential framework. It is well suited to applications involving on-line, nonlinear, and nongaussian signal processing. We show how the new algorithm outperforms extended Kalman filter training on several problems. In particular, we address the problem of pricing option contracts, traded in financial markets. In this context, we are able to estimate the one-step-ahead probability density functions of the options prices.
机译:我们讨论了一种使用顺序蒙特卡洛算法训练神经网络的新策略,并提出了一种新的混合梯度下降/采样重要性重采样算法(HySIR)。在计算时间和准确性方面,混合SIR是对传统顺序蒙特卡洛技术的明显改进。新算法可以看作是一种全局优化策略,它使我们能够学习顺序框架中网络权重和输出的概率分布。它非常适合涉及在线,非线性和非高斯信号处理的应用。我们将展示新算法在某些问题上如何胜过扩展卡尔曼滤波器训练。特别是,我们解决了在金融市场上交易的定价期权合同的问题。在这种情况下,我们能够估计期权价格的一步一步概率密度函数。

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