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A BAYESIAN METHOD TO IMPROVE THE EXTRAPOLATION ABILITY OF ANNS

机译:一种提高ANNS推断能力的贝叶斯方法

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Although artificial neural networks have been shown to be superior prediction models in many hydrology-related areas, their known lack of extrapolation capability has limited the wider use and acceptance of ANNs as forecasting models. This problem lies mainly with the fact that a single "most likely" weight vector, which is determined by calibration with a finite set of data, is used to define the function modelled by the ANN. There are, in fact, many different weight vectors that result in approximately equal model performance; however, standard ANN development approaches do not allow for any weight vectors, other than that which provides the best fit to the calibration data, to impact on the predictions made. In this paper, a Bayesian method is presented that enables the entire range of plausible weight vectors to be accounted for in the model predictions. In doing so, the relationship modelled by the ANN is more general and less dominated by the information contained in the calibration data. The method is applied to a real-world case study known to require extrapolation and the resulting ANN is shown to perform significantly better than an ANN developed using standard approaches.
机译:尽管在许多水文相关领域被证明是人工神经网络是优越的预测模型,但它们已知缺乏外推能力限制了ANNS的更广泛使用和接受作为预测模型。这个问题主要在于,通过用有限组数据校准确定的单个“最可能”的重量向量来定义由ANN建模的功能。实际上,许多不同的权重向量导致近似相同的模型性能;然而,标准的ANN开发方法不允许任何重量向量,除了提供最适合校准数据的权重向量,以影响所做的预测。在本文中,提出了一种贝叶斯方法,其使得能够在模型预测中占据众所周知的权重向量的整个范围。在这样做时,由ANN建模的关系更一般,并且由校准数据中包含的信息较少。该方法应用于已知需要外推的真实案例研究,并且所得到的ANN被示出比使用标准方法开发的ANN显着更好地执行。

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