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Application Of Rough Set And Decision Tree For Characterization Of Premonitory Factors Of Low Seismic Activity

机译:粗糙集和决策树在表征低地震活动性监测因素中的应用

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This paper presents a machine learning approach to characterizing premonitory factors of earthquake. The characteristic asymmetric distribution of seismic events and sampling limitations make it difficult to apply the conventional statistical predictive techniques. The paper shows that inductive machine learning techniques such as rough set theory and decision tree (C4.5 algorithm) allows developing knowledge representation structure of seismic activity in term of meaningful decision rules involving premonitory descriptors such as space-time distribution of radon concentration and environmental variables. The both techniques identify significant premonitory variables and rank attributes using information theoretic measures, e.g., entropy and frequency of occurrence in reducts. The cross-validation based on "leave-one-out" method shows that although the overall predictive and discriminatory performance of decision tree is to some extent better than rough set, the difference is not statistically significant.
机译:本文提出了一种机器学习方法来表征地震的前兆因素。地震事件的特征性不对称分布和采样限制使得难以应用常规的统计预测技术。该论文表明,归纳式机器学习技术(例如粗糙集理论和决策树(C4.5算法))允许根据有意义的决策规则开发地震活动的知识表示结构,涉及有意义的决策规则,例如pre浓度和环境的时空分布变量。两种技术都使用信息理论量度(例如,熵和还原中的出现频率)来识别重要的监测变量并对属性进行排名。基于“留一法”的交叉验证表明,尽管决策树的整体预测和区分性能在某种程度上比粗糙集更好,但差异在统计学上并不显着。

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