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Exploring Resampling with Neighborhood Bias on Imbalanced Regression Problems

机译:探索不平衡回归问题的邻域偏差重采样

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Imbalanced domains are an important problem that arises in predictive tasks causing a loss in the performance of the most relevant cases for the user. This problem has been intensively studied for classification problems. Recently it was recognized that imbalanced domains occur in several other contexts and for a diversity of types of tasks. This paper focus on imbalanced regression tasks. Resampling strategies are among the most successful approaches to imbalanced domains. In this work we propose variants of existing resampling strategies that are able to take into account the information regarding the neighborhood of the examples. Instead of performing sampling uniformly, our proposals bias the strategies for reinforcing some regions of the data sets. In an extensive set of experiments we provide evidence of the advantage of introducing a neighborhood bias in the resampling strategies.
机译:域不平衡是在预测任务中出现的重要问题,导致用户最相关案例的性能下降。对于分类问题,已经对该问题进行了深入研究。最近,人们认识到,不平衡域发生在其他几种情况下,并且涉及多种任务类型。本文关注于不平衡的回归任务。重采样策略是解决不平衡域的最成功方法之一。在这项工作中,我们提出了现有重采样策略的变体,这些变体能够考虑有关示例邻域的信息。我们的建议不是统一进行抽样,而是对加强数据集某些区域的策略产生了偏见。在大量的实验中,我们提供了在重采样策略中引入邻域偏差的优势的证据。

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