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A Bat-Optimized One-Class Support Vector Machine for Mineral Prospectivity Mapping

机译:蝙蝠优化的一类支持向量机,用于矿物前景图绘制

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One-class support vector machine (OCSVM) is an efficient data-driven mineral prospectivity mapping model. Since the parameters of OCSVM directly affect the performance of the model, it is necessary to optimize the parameters of OCSVM in mineral prospectivity mapping. Trial and error method is usually used to determine the “optimal” parameters of OCSVM. However, it is difficult to find the globally optimal parameters by the trial and error method. By combining OCSVM with the bat algorithm, the intialization parameters of the OCSVM can be automatically optimized. The combined model is called bat-optimized OCSVM. In this model, the area under the curve (AUC) of OCSVM is taken as the fitness value of the objective function optimized by the bat algorithm, the value ranges of the initialization parameters of OCSVM are used to specify the search space of bat population, and the optimal parameters of OCSVM are automatically determined through the iterative search process of the bat algorithm. The bat-optimized OCSVMs were used to map mineral prospectivity of the Helong district, Jilin Province, China, and compared with the OCSVM initialized by the default parameters (i.e., common OCSVM) and the OCSVM optimized by trial and error. The results show that (a) the receiver operating characteristic (ROC) curve of the trial and error-optimized OCSVM is intersected with those of the bat-optimized OCSVMs and (b) the ROC curves of the optimized OCSVMs slightly dominate that of the common OCSVM in the ROC space. The area under the curves (AUCs) of the common and trial and error-optimized OCSVMs (0.8268 and 0.8566) are smaller than those of the bat-optimized ones (0.8649 and 0.8644). The optimal threshold for extracting mineral targets was determined by using the Youden index. The mineral targets predicted by the common and trial and error-optimized OCSVMs account for 29.61% and 18.66% of the study area respectively, and contain 93% and 86% of the known mineral deposits. The mineral targets predicted by the bat-optimized OCSVMs account for 19.84% and 14.22% of the study area respectively, and also contain 93% and 86% of the known mineral deposits. Therefore, we have 0.93/0.2961 = 3.1408 0.86/0.1866 = 4.6088 0.93/0.1984 = 4.6875 0.86/0.1422 = 6.0478, indicating that the bat-optimized OCSVMs perform slightly better than the common and trial and error-optimized OCSVMs in mineral prospectivity mapping.
机译:一类支持向量机(OCSVM)是一种有效的数据驱动的矿物远景映射模型。由于OCSVM的参数直接影响模型的性能,因此有必要在矿物前瞻性制图中优化OCSVM的参数。反复试验法通常用于确定OCSVM的“最佳”参数。但是,通过试错法很难找到全局最优参数。通过将OCSVM与bat算法结合使用,可以自动优化OCSVM的初始化参数。组合模型称为蝙蝠优化的OCSVM。在该模型中,将OCSVM的曲线下面积(AUC)作为通过bat算法优化的目标函数的适应度值,使用OCSVM初始化参数的值范围来指定bat种群的搜索空间,通过bat算法的迭代搜索过程自动确定OCSVM的最优参数。蝙蝠优化的OCSVM用于绘制中国吉林省鹤龙区的矿产前景图,并与通过默认参数(即普通OCSVM)初始化的OCSVM和通过反复试验优化的OCSVM进行比较。结果表明:(a)试验和误差优化的OCSVM的接收器工作特性(ROC)曲线与蝙蝠优化的OCSVM的接收器工作特性(ROC)曲线相交,并且(b)优化的OCSVM的ROC曲线在一般情况下略占优势ROC空间中的OCSVM。普通的和试验优化的OCSVM(0.8268和0.8566)的曲线下面积(AUC)小于蝙蝠优化的OCSVM(0.8649和0.8644)的曲线下面积。通过使用Youden指数确定提取矿物质目标的最佳阈值。普通,经试验和误差优化的OCSVM预测的矿物目标分别占研究区域的29.61%和18.66%,并包含93%和86%的已知矿床。蝙蝠优化的OCSVMs预测的矿物目标分别占研究区域的19.84%和14.22%,并且还包含93%和86%的已知矿床。因此,我们有0.93 / 0.2961 = 3.1408 <0.86 / 0.1866 = 4.6088 <0.93 / 0.1984 = 4.6875 <0.86 / 0.1422 = 6.0478,这表明蝙蝠优化的OCSVM在矿物中的性能优于普通和试验以及误差优化的OCSVM前景映射。

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