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Automatic MLP Weight Regularization on Mineralization Prediction Tasks

机译:矿化预测任务的自动MLP权重正则化

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摘要

Conventional neural network training methods attempt to find a set of values for the network weights by minimizing an error function using some gradient descent based technique. In order to achieve good generalization performance, it is usually necessary to introduce a regularization term into the error function to prevent weights becoming overly large. In the conventional approach, the regularization coefficient, which controls the degree to which large weights are penalized, must be optimized outside of the weight training procedure, and this is usually done by means of a cross-validation procedure in which some training examples are held out, thereby reducing the number of examples available for weight optimization. Bayesian methods provide a means of optimizing these coefficients within the weight optimization procedure. This paper reports on the application of Bayesian MLP techniques to the task of predicting mineralization potential from geoscientific data. Results demonstrate that the Bayesian approach results in similar maps to the conventional MLP approach, while avoiding the complex cross-validation procedure required by the latter.
机译:常规的神经网络训练方法试图通过使用一些基于梯度下降的技术使误差函数最小化来找到一组网络权重值。为了获得良好的泛化性能,通常必须将正则项引入误差函数中,以防止权重过大。在常规方法中,必须在举重训练过程之外优化控制大举重处罚程度的正则化系数,这通常是通过交叉验证过程来完成的,其中保留了一些训练示例从而减少了可用于权重优化的示例数。贝叶斯方法提供了一种在权重优化过程中优化这些系数的方法。本文报道了贝叶斯MLP技术在根据地球科学数据预测成矿潜力的任务中的应用。结果表明,贝叶斯方法与传统的MLP方法具有相似的图谱,同时避免了后者所需的复杂的交叉验证程序。

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