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An Imbalanced Data Rule Learner

机译:不平衡的数据规则学习者

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摘要

Imbalanced data learning has recently begun to receive much attention from research and industrial communities as traditional machine learners no longer give satisfactory results. Solutions to the problem generally attempt to adapt standard learners to the imbalanced data setting. Basically, higher weights are assigned to small class examples to avoid their being overshadowed by the large class ones. The difficulty determining a reasonable weight for each example remains. In this work, we propose a scheme to weight examples of the small class based solely on local data distributions. The approach is for categorical data, and a rule learning algorithm is constructed taking the weighting scheme into account. Empirical evaluations prove the advantages of this approach.
机译:最近,由于传统的机器学习器无法再提供令人满意的结果,因此数据不平衡学习已开始受到研究和工业界的广泛关注。解决问题的方法通常是尝试使标准学习者适应不平衡的数据设置。基本上,较高的权重分配给小类别的示例,以避免它们被大类别的示例所掩盖。确定每个示例的合理权重的困难仍然存在。在这项工作中,我们提出了一种仅基于本地数据分布对小类示例进行加权的方案。该方法用于分类数据,并且考虑了加权方案构造了规则学习算法。实证评估证明了这种方法的优势。

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