SMOTEBoost for Regression: Improving the Prediction of Extreme Values

Nuno Moniz, Rita P. Ribeiro, Vítor Cerqueira, N. Chawla
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引用次数: 18

Abstract

Supervised learning with imbalanced domains is one of the biggest challenges in machine learning. Such tasks differ from standard learning tasks by assuming a skewed distribution of target variables, and user domain preference towards under-represented cases. Most research has focused on imbalanced classification tasks, where a wide range of solutions has been tested. Still, little work has been done concerning imbalanced regression tasks. In this paper, we propose an adaptation of the SMOTEBoost approach for the problem of imbalanced regression. Originally designed for classification tasks, it combines boosting methods and the SMOTE resampling strategy. We present four variants of SMOTEBoost and provide an experimental evaluation using 30 datasets with an extensive analysis of results in order to assess the ability of SMOTEBoost methods in predicting extreme target values, and their predictive trade-off concerning baseline boosting methods. SMOTEBoost is publicly available in a software package.
SMOTEBoost用于回归:改进极值的预测
不平衡域的监督学习是机器学习中最大的挑战之一。这些任务不同于标准的学习任务,因为它们假设目标变量的分布是倾斜的,并且用户域偏好于代表性不足的情况。大多数研究都集中在不平衡分类任务上,其中已经测试了广泛的解决方案。然而,关于不平衡回归任务的研究还很少。在本文中,我们提出了一种适用于不平衡回归问题的SMOTEBoost方法。它最初是为分类任务设计的,它结合了增强方法和SMOTE重采样策略。我们提出了SMOTEBoost的四种变体,并使用30个数据集进行了实验评估,并对结果进行了广泛的分析,以评估SMOTEBoost方法预测极端目标值的能力,以及它们与基线增强方法的预测权衡。SMOTEBoost以软件包的形式公开提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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