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首页> 外文期刊>Stochastic environmental research and risk assessment >Support vector machines and gradient boosting for graphical estimation of a slate deposit
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Support vector machines and gradient boosting for graphical estimation of a slate deposit

机译:支持向量机和梯度提升,用于板岩矿床的图形估算

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Critical for an efficient and effective exploitation of a slate mine is to obtain information on its technical quality, in other words, on the exploitability potential of the deposit. We applied support vector machines (SVM) and LS-Boosting to the assessment of the technical quality of a new unexploited area of a mine, and compared the results to those obtained for kriging and neural networks. Firstly we analyzed the relationship between kriging and semi-parametric SVM in a regularization framework and explored the different alternatives for training these networks. Subsequently, in an attempt to combine both radial and projection structures, we formulated a boosting technique for radial basis function (RBF) networks defined over projections in the input space (RBFPP). The application of these techniques to our test drilling data demonstrated a similar level of performance for all the estimators examined, with the main difference occurring in the shape of the respective deposit reconstructions. Therefore, in choosing between the different techniques, an essential aspect will be their ability to reproduce the morphological characteristics of the true process. In this paper we also evaluate the benefits of using the estimated covariogram as the kernel of the SVMs and compare the sparsity of the different solutions. The results obtained show that the selection of a standard kernel that ignores the variability structure of the problem produces poorer results than when the estimated covariogram is used as the kernel.
机译:有效地开采板岩矿的关键是获得有关其技术质量的信息,换句话说,就是有关矿床可开采性的信息。我们将支持向量机(SVM)和LS-Boosting应用于矿山新的未开发区域的技术质量评估,并将结果与​​通过克里金法和神经网络获得的结果进行了比较。首先,我们在正则化框架中分析了克里金法和半参数支持向量机之间的关系,并探讨了训练这些网络的不同方法。随后,为结合径向结构和投影结构,我们为在输入空间(RBFPP)的投影上定义的径向基函数(RBF)网络制定了一种增强技术。这些技术在我们的测试钻井数据中的应用表明,所检查的所有估算器均具有相似的性能水平,主要区别在于相应矿床构造的形状。因此,在不同技术之间进行选择时,一个重要方面将是它们再现真实过程的形态特征的能力。在本文中,我们还评估了使用估计协方差作为SVM内核的好处,并比较了不同解决方案的稀疏性。获得的结果表明,选择标准内核而不考虑问题的可变性结构所产生的结果要比将估计的协方差图用作内核时要差。

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