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首页> 外文期刊>Journal of Computing in Civil Engineering >Robust Training Termination Criterion for Back-Propagation ANNs Applicable to Small Data Sets
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Robust Training Termination Criterion for Back-Propagation ANNs Applicable to Small Data Sets

机译:适用于小数据集的反向传播ANN的鲁棒训练终止准则

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摘要

One of the daunting tasks of a neural network modeler is prescribing an appropriate training termination criterion, a criterion that avoids underfitting or overfitting the underlying functional relationship between input and oulpul variables. This is particularly true when dealing with smaller data sets that do not offer the luxury of splitting the database into tradilional training, testing, and validation sets. In the absence of a testing data set or when the testing data set is small, which is not very uncommon when working with environmental databases, it is extremely difficult to know when to terminate the training exercise. This paper proposes a new criterion that provides adequate guidance on training termination without the necessity for a testing data set and illustrates the validity of the proposed criterion on three data sets for water resources and environmental engineering applications. An extensive study of a number of large and small data sets has indicated that the moving average of relative strength index of a randomly generated dummy input variable tends to reach zero at the optimal termination point and tends to move away from zero beyond the optimal point. Based on this observation, a training terminating index was developed, tested, and validated on three datasets.
机译:神经网络建模器的艰巨任务之一是规定适当的训练终止标准,该标准可避免过分或过分拟合输入变量和oulpul变量之间的基本功能关系。当处理较小的数据集时,尤其如此,这些数据集不能将数据库拆分为传统的训练,测试和验证集。在没有测试数据集的情况下,或者当测试数据集很小时(在使用环境数据库时并不少见),要知道何时终止培训非常困难。本文提出了一个新准则,该准则为培训终止提供了足够的指导,而无需测试数据集,并说明了该准则在水资源和环境工程应用的三个数据集上的有效性。对大量大小数据集的广泛研究表明,随机生成的虚拟输入变量的相对强度指标的移动平均值趋向于在最佳终止点处达到零,并趋于远离零而超出最佳点。基于此观察结果,在三个数据集上开发,测试并验证了训练终止索引。

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