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Effectiveness of Basic and Advanced Sampling Strategies on the Classification of Imbalanced Data. A Comparative Study Using Classical and Novel Metrics

机译:基本和高级采样策略对不平衡数据分类的有效性。使用古典和新颖度量的比较研究

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The imbalanced class problem is noteworthy given its impact on the induction of predictive models and its constant presence in several application areas. It is a challenge in supervised classification, since most of classifiers are very sensitive to class distributions. Consequently, the predictive model is biased to the majority class, which leads to a low performance. In this paper, we analyze the reliability of resampling strategies through the influence of some factors such as dataset characteristics and the classifiers used for building the models, in order to improve the performance and determine which resampling method will be used according to these factors. Experiments over 24 real datasets with different imbalance ratio, using six different classifiers, seven resampling algorithms and six performance evaluation measures have been conducted aiming at showing which resampling method will be the most suitable depending on these factors.
机译:鉴于其对诱导预测模型及其在几个应用领域的持续存在的影响,不平衡的课题问题是值得注意的。由于监督分类是一项挑战,因为大多数分类器对类分布非常敏感。因此,预测模型被偏置到多数类,这导致低性能。在本文中,我们通过一些因素的影响和用于构建模型的分类器的影响来分析重采样策略的可靠性,以提高性能并确定将根据这些因素使用哪种重采样方法。使用六个不同的分类器,七种重采样算法和六种性能评估措施的不同不平衡比例进行了24个真实数据集的实验,该措施旨在表明,根据这些因素,重采样方法将是最合适的。

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