基于自适应非对称错误分类代价的SVM类地雷目标检测

Xiaoguang Wang, Hang Shao, N. Japkowicz, S. Matwin, Xuan Liu, A. Bourque, Bao Nguyen
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引用次数: 14

摘要

现实世界的数据挖掘应用程序,如地雷对抗任务(MCM),涉及到从不平衡的数据集中学习,这些数据集包含很少的少数类实例和许多多数类实例。例如,探测到的自然发生的杂波物体(如岩石)的数量通常远远超过探测到地雷这种相对罕见的事件。本文提出了一种具有自适应非对称误分类代价(实例加权)的支持向量机来解决地雷对抗任务中的倾斜向量空间问题。实验结果表明,该算法可用于不平衡声纳图像数据集,提高了预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using SVM with Adaptively Asymmetric MisClassification Costs for Mine-Like Objects Detection
Real world data mining applications such as Mine Countermeasure Missions (MCM) involve learning from imbalanced data sets, which contain very few instances of the minority classes and many instances of the majority class. For instance, the number of naturally occurring clutter objects (such as rocks) that are detected typically far outweighs the relatively rare event of detecting a mine. In this paper we propose support vector machine with adaptive asymmetric misclassification costs (instances weighted) to solve the skewed vector spaces problem in mine countermeasure missions. Experimental results show that the given algorithm could be used for imbalanced sonar image data sets and makes an improvement in prediction performance.
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