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A Robust and Effective Learning Algorithm for Feedforward Neural Networks Based on the Influence Function

机译:基于影响函数的前馈神经网络的鲁棒有效的学习算法

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The learning process of the Feedforward Artificial Neural Networks relies on the data, though a robustness analysis of the parameter estimates of the model must be done due to the presence of outlying observations in the data. In this paper we seek the robust properties in the parameter estimates in the sense that the influence of aberrant observations or outliers in the estimate is bounded so the neural network is able to model the bulk of data. We also seek a trade off between robustness and efficiency under a Gaussian model. An adaptive learning procedure that seeks both aspects is developed. Finally we show some simulations results applied to the RESEX time series.
机译:前馈人工神经网络的学习过程依赖于数据,但是由于存在数据中的偏远观测,必须对模型的参数估计进行鲁棒性分析。在本文中,我们在参数估计中寻求强大的属性,意义上是估计中的异常观测或异常值的影响被界定,因此神经网络能够模拟大量数据。我们还在高斯模型下寻求鲁棒性和效率之间的折衷。开发了一种寻求两个方面的自适应学习过程。最后,我们展示了一些应用于Resex时间序列的模拟结果。

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