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首页> 外文期刊>International journal of machine learning and cybernetics >Relevance vector machines using weighted expected squared distance for ore grade estimation with incomplete data
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Relevance vector machines using weighted expected squared distance for ore grade estimation with incomplete data

机译:相关向量机使用加权期望平方距离估计不完整数据的矿石品位

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摘要

Accurate ore grade estimation is crucial to mineral resources evaluation and exploration. In this paper, we consider the borehole data collected from the Solwara 1 deposit, where the hydrothermal sulfide ore body is quite complicated with incomplete ore grade values. To solve this estimation problem, the relevance vector machine (RVM) and the expected squared distance (ESD) algorithm are incorporated into one regression model. Moreover, we improve the ESD algorithm by weighting the attributes of the data set and propose the weighted expected squared distance (WESD). In this paper, we uncover the symbiosis characteristics among different elements of the deposits by statistical analysis, which leads to estimating certain metal based on the data of other elements instead of on geographical position. The proposed WESD-RVM features high sparsity and accuracy, as well as the capability of handling incomplete data. Effectiveness of the proposed model is demonstrated by comparing with other estimating algorithms, such as inverse distance weighted method and Kriging algorithm which utilize only geographical spatial coordinates for inputs; extreme learning machine, which is unable to deal with incomplete data; and ordinary ESD based RVM regression model without entropy weighted distance. The experimental results show that the proposed WESD-RVM outperforms other methods with considerable predictive and generalizing ability.
机译:准确的矿石品位估算对于矿产资源评估和勘探至关重要。在本文中,我们考虑了从Solwara 1矿床收集的钻孔数据,其中热液硫化物矿体非常复杂,矿石品位值不完整。为了解决这个估计问题,将相关向量机(RVM)和期望平方距离(ESD)算法合并到一个回归模型中。此外,我们通过对数据集的属性进行加权来改进ESD算法,并提出加权期望平方距离(WESD)。本文通过统计分析揭示了矿床不同元素之间的共生特征,从而根据其他元素的数据而不是地理位置来估算某些金属。拟议的WESD-RVM具有高度稀疏性和准确性,并具有处理不完整数据的能力。通过与其他估计算法进行比较,证明了所提模型的有效性,例如逆距离加权方法和Kriging算法,这些算法仅利用地理空间坐标作为输入。极端的学习机,无法处理不完整的数据;和基于普通ESD的RVM回归模型,而没有熵加权距离。实验结果表明,所提出的WESD-RVM具有优于其他方法的预测能力和泛化能力。

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