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A new model selection strategy in time series forecasting with artificial neural networks: IHTS

机译:人工神经网络在时间序列预测中的新模型选择策略:IHTS

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摘要

Although artificial neural networks have recently gained importance in time series applications, some methodological shortcomings still continue to exist. One of these shortcomings is the selection of the final neural network model to be used to evaluate its performance in test set among many neural networks. The general way to overcome this problem is to divide data sets into training, validation, and test sets and also to select a neural network model that provides the smallest error value in the validation set. However, it is likely that the selected neural network model would be overfitting the validation data. This paper proposes a new model selection strategy (IHTS) for forecasting with neural networks. The proposed selection strategy first determines the numbers of input and hidden units, and then, selects a neural network model from various trials caused by different initial weights by considering validation and training performances of each neural network model. It is observed that the proposed selection strategy improves the performance of the neural networks statistically as compared with the classic model selection method in the simulated and real data sets. Also, it exhibits some robustness against the size of the validation data. (C) 2015 Elsevier B.V. All rights reserved.
机译:尽管人工神经网络最近在时间序列应用中变得越来越重要,但是一些方法学缺陷仍然继续存在。这些缺点之一是最终神经网络模型的选择,该模型将用于评估许多神经网络在测试集中的性能。解决该问题的一般方法是将数据集分为训练集,验证集和测试集,并选择一个在验证集中提供最小误差值的神经网络模型。但是,所选的神经网络模型可能会过度拟合验证数据。本文提出了一种新的神经网络预测模型选择策略(IHTS)。提出的选择策略首先确定输入和隐藏单元的数量,然后通过考虑每个神经网络模型的验证和训练性能,从由不同初始权重引起的各种试验中选择一个神经网络模型。可以看出,与经典模型选择方法相比,所提出的选择策略在统计和实际数据集方面均在统计上提高了神经网络的性能。而且,它对验证数据的大小也表现出一定的鲁棒性。 (C)2015 Elsevier B.V.保留所有权利。

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