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Bayesian Variable Selection in Neural Networks for Short-Term Meteorological Prediction

机译:神经网络中的贝叶斯变量选择用于短期气象预报

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This work examines the influence of Bayesian variable selection on neural architectures for global solar irradiation and air temperature time series prediction. These models, 3 neural architectures with differing input and output processing strategies [2], predict all time slots in the 24 hours ahead period, with inputs solely taken from local measurements of the 24 last hours. Qualitative and computational points of view are considered for the comparison of Bayesian and non-Bayesian learning, with a specific care for salient variable sets analysis. For generalization purpose, models are assessed and compared on data from two contrasted sites in France. The input space appeared to be reduced by at least 34%, and up to 73%, with a small prediction quality loss (1.3% on average), and a good repeatability of selected salient variables across sites.
机译:这项工作研究了贝叶斯变量选择对​​神经架构的影响,以进行全球太阳辐射和气温时间序列预测。这些模型是3种具有不同输入和输出处理策略的神经体系结构[2],它们预测了提前24小时内的所有时隙,而输入仅来自对最近24小时的本地测量。为了比较贝叶斯学习和非贝叶斯学习,考虑了定性和计算的观点,尤其要注意显着变量集分析。为了通用起见,对模型进行了评估并与来自法国两个对比站点的数据进行了比较。输入空间似乎减少了至少34%,最多减少了73%,预测质量损失很小(平均1.3%),并且跨站点选择的显着变量具有良好的可重复性。

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