一类偏斜数据的抗噪声增强算法

J. V. Hulse, T. Khoshgoftaar, Amri Napolitano
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引用次数: 3

摘要

增强方法已经成功地应用于各种机器学习应用中。在数据质量问题的背景下,已经提出并评估了许多标准增强方法的变体。为了解决错误标记示例的问题,开发了ORBoost来防止过度拟合噪声示例。我们的研究小组最近提出RUSBoost作为AdaBoost算法的增强,用于处理倾斜的类分布。本文对RUSBoost算法进行了改进,加入了ORBoost的噪声处理能力,以提高其对噪声数据的处理能力。在使用五个具有不同水平模拟噪声的真实数据集的广泛实验中,将新方法与ORBoost和RUSBoost进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Noise-Resistant Boosting Algorithm for Class-Skewed Data
Boosting methods have been successfully applied in a wide variety of machine learning applications. In the context of data quality issues, a number of variants of the standard boosting method have been proposed and evaluated. To address the problem of mislabeled examples, ORBoost was developed to prevent over fitting to noisy examples. Our research group has recently proposed RUSBoost as an enhancement to the AdaBoost algorithm for dealing with skewed class distributions. This work proposes a modification to the RUSBoost algorithm, incorporating the noise-handling ability of ORBoost, to improve its handling of noisy data. The new method is compared with both ORBoost and RUSBoost in an extensive set of experiments using five real-world datasets with various levels of simulated noise.
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