Two-Dimensional-Reduction Random Forest

Shuquan Ye, Zhiwen Yu, Jiaying Lin, Kaixiang Yang, Dan Dai, Zhi-hui Zhan, Wei-neng Chen, Jun Zhang
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Abstract

Random forest (RF) is a competitive machine learning theorem, while one of the big challenges for it is imbalanced real-world data. A Two-dimensional-reduction RF (2DRRF) is presented in this paper, which is optimized based on traditional RF and three innovation points as follows. To improve RF in terms of performance on imbalanced data, a two-dimensional-reduction approach is created. Then, a modified T-link is proposed focusing on detecting and reducing safe samples. Moreover, a biased sampling manner is employed to build up optimal training datasets. Across 13 imbalanced datasets from KEEL-dataset with imbalance-ratio ranging from 6.38 to 129.44, experiments are carried out indicating that 2DRRF steadily holds advantages over the other two relevant implementations of RF in terms of accuracy, recall, precision and F-value.
二维约简随机森林
随机森林(Random forest, RF)是一个有竞争力的机器学习定理,而它面临的一大挑战是现实世界数据的不平衡。本文提出了一种二维简化射频(2DRRF),它在传统射频的基础上进行了优化,并进行了以下三个创新点。为了提高射频在不平衡数据上的性能,创建了一种二维降维方法。然后,提出了一种改进的T-link,重点是检测和减少安全样本。此外,采用有偏抽样的方法构建最优训练数据集。在龙骨数据集(KEEL-dataset)的13个不平衡数据集(失衡比为6.38 ~ 129.44)上进行的实验表明,2DRRF在正确率、召回率、精密度和f值方面稳定地优于其他两种相关的RF实现。
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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