首页> 外文会议>Mexican International Conference on Artificial Intelligence(MICAI 2007); 20071104-10; Aguascalientes(MX) >Optimization Procedure for Predicting Nonlinear Time Series Based on a Non-Gaussian Noise Model
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Optimization Procedure for Predicting Nonlinear Time Series Based on a Non-Gaussian Noise Model

机译:基于非高斯噪声模型的非线性时间序列预测的优化程序

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In this article we investigate the influence of a Pareto-like noise model on the performance of an artificial neural network used to predict a nonlinear time series. A Pareto-like noise model is, in contrast to a Gaussian noise model, based on a power law distribution which has long tails compared to a Gaussian distribution. This allows for larger fluctuations in the deviation between predicted and observed values of the time series. We define an optimization procedure that minimizes the mean squared error of the predicted time series by maximizing the likelihood function based on the Pareto-like noise model. Numerical results for an artificial time series show that this noise model gives better results than a model based on Gaussian noise demonstrating that by allowing larger fluctuations the parameter space of the likelihood function can be search more efficiently. As a consequence, our results may indicate a more generic characteristics of optimization problems not restricted to problems from time series prediction.
机译:在本文中,我们研究了类似于帕累托的噪声模型对用于预测非线性时间序列的人工神经网络的性能的影响。与高斯噪声模型相比,类帕累托噪声模型基于幂律分布,该幂律分布与高斯分布相比尾部较长。这允许时间序列的预测值和观察值之间的偏差更大的波动。我们定义了一个优化过程,该过程通过基于类帕累托噪声模型使似然函数最大化,从而使预测时间序列的均方误差最小。人工时间序列的数值结果表明,该噪声模型比基于高斯噪声的模型给出更好的结果,表明通过允许更大的波动,可以更有效地搜索似然函数的参数空间。结果,我们的结果可能表明优化问题具有更一般的特征,而不仅限于时间序列预测中的问题。

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