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The methods of extracting the contribution of variables in artificial neural network models - Comparison of inherent instability

机译:提取人工神经网络模型中变量贡献的方法 - 该固有不稳定性的比较

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摘要

The methods for quantifying variable importance in neural network based model are used in many scientific fields. These methods open the "black box" model and give the information about relative importance of explicative variables. However, the contribution of independent input variables is usually calculated based on the single, best neural model. It was proved in several scientific reports that the use of a single neural network architecture can lead to misleading results. In this work, the novel strategy, based on a group of neural models containing models of the same architecture trained, starting from different random values of connection weights as well as models of different architectures is proposed. The results are based on the model of relationship between chemical honey parameters as well as the temperature and dielectric loss coefficient of honey. This new approach promises to produce relatively precise and reliable results and is valuable in real-world applications. (C) 2016 Elsevier B.V. All rights reserved.
机译:许多科学领域使用了用于定量基于神经网络模型中的变量重要性的方法。这些方法打开“黑匣子”模型,并提供有关解释变量相对重要性的信息。但是,独立输入变量的贡献通常基于单个最佳神经模型计算。事实证明,在几份科学报告中,使用单一的神经网络架构可能会导致误导结果。在这项工作中,基于一组含有相同架构模型的神经模型的新策略,从不同的连接权重的不同随机值以及不同架构的模型开始。结果基于化学蜂蜜参数之间的关系模型以及蜂蜜的温度和介电损耗系数。这种新的方法有望产生相对精确和可靠的结果,并且在现实世界应用中具有重要价值。 (c)2016年Elsevier B.v.保留所有权利。

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