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Clustering Based Sampling for Learning from Unbalanced Seismic Data Set

机译:基于聚类的采样技术用于非平衡地震数据集的学习

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This article describes how some stratum contain a stress concentration zones, and while the stress increases and exceeds a high value or so called critical value, it destroys rocks. This causes the emission of seismic tremors of different energies. Seismology consists of the study of the effects of seismic waves, and predicting the seismic hazards to rocks and long wall coals. This is alongside the main problem occurred in this field, the unbalanced data that lacks cause when studying the seismic hazards. Learning from unbalanced data is considered as one of the most difficult issues to solve nowadays, this article presents an informed sampling method that is based on a clustering approach for the prediction of seismic hazards in Polish coal mines. The idea is based on the dividing of non-hazardous examples which represents more than 90% of the real-life cases into subsets of examples in order to balance the classes. This action facilitates the learning from the recorded data. For evaluation, the authors have evaluated the system based on the prediction of seismic hazards where positive results have been reviewed compared to the classification of examples without balancing the cases.
机译:本文介绍了一些地层如何包含应力集中区,并且当应力增加并超过一个高值或所谓的临界值时,它会破坏岩石。这导致发出不同能量的地震震颤。地震学包括研究地震波的影响,并预测对岩石和长壁煤的地震危害。这是该领域出现的主要问题,研究地震危险时缺乏原因的不平衡数据。从不平衡数据中学习是当今最难解决的问题之一,本文提出了一种基于聚类方法的明智采样方法,用于预测波兰煤矿的地震灾害。这个想法是基于将代表90%以上真实案例的非危险示例划分为示例子集,以平衡类别。该动作有助于从记录的数据中学习。为了进行评估,作者基于地震危险性的预测对系统进行了评估,与实例分类相比,在没有平衡案例的情况下,对正面结果进行了审查。

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