首页> 外文期刊>Computers & geosciences >A positive and unlabeled learning algorithm for mineral prospectivity mapping
【24h】

A positive and unlabeled learning algorithm for mineral prospectivity mapping

机译:矿物前瞻性映射的积极与未标记的学习算法

获取原文
获取原文并翻译 | 示例
       

摘要

Application of supervised machine learning algorithms for mineral prospectivity mapping (MPM) requires positive and negative training samples. Typically, known mineral deposits are considered as positive training samples. However, the selection of negative training samples in the process of MPM is challenging. The one-class classification methods require positive and unlabeled samples or only positive samples; while without requiring negative training samples. In this study, the positive and unlabeled learning (PUL) algorithm was employed to produce a potential map for Fe polymetallic mineralization in southwestern Fujian province, China. This study first examined the sensitivity of the PUL algorithm to different training sets of labeled and unlabeled locations. The predictive results on 10 random unlabeled datasets confirm that PUL modeling with different training sets is reproducible and stable. In addition, the trained model provides a strong spatial correlation between the predictive variables and the locations of known mineral deposits. Finally, the performance of PUL1algorithm is compared to one-class support vector machine (OCSVM), artificial neural networks (ANN), and logistic regression (LR). Comparative results indicate that the PUL model can achieve a better performance in terms of both fitting-rate, prediction-rate, and AUC value compared with OCSVM, ANN and LR. The labelling efforts can be significantly reduced because the PUL algorithm requires only a small number of positive samples and utilizes unlabeled data in training.
机译:监督机器学习算法应用于矿物预期映射(MPM)需要正负训练样本。通常,已知的矿物沉积物被认为是阳性训练样本。然而,在MPM的过程中选择负训练样本是挑战性的。单级分类方法需要阳性和未标记的样本或仅阳性样本;而无需负面训练样本。在这项研究中,采用正和未标记的学习(普通)算法在福建西南部生产Fe多金属矿化的潜在地图。本研究首先检查了普通算法对标记和未标记位置不同训练集的敏感性。 10个随机未标记的数据集上的预测结果证实,具有不同训练集的液体建模是可重复且稳定的。此外,训练的模型提供了预测变量与已知矿物沉积物的位置之间的强烈空间相关性。最后,将Pul1alGorithm的性能与单级支持向量机(OCSVM),人工神经网络(ANN)和Logistic回归(LR)进行比较。比较结果表明,与拟合速率,预测率和AUC值相比,液模型可以实现更好的性能与OCSVM,ANN和LR相比。可以显着降低标签努力,因为普通算法只需要少量的正样品并在训练中使用未标记的数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号