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基于旋转平衡森林的不平衡数据分类算法
引用本文:周尔昊,高尚,申震. 基于旋转平衡森林的不平衡数据分类算法[J]. 计算机工程与设计, 2022, 43(2): 458-464. DOI: 10.16208/j.issn1000-7024.2022.02.022
作者姓名:周尔昊  高尚  申震
作者单位:江苏科技大学 计算机学院,江苏 镇江 212100
摘    要:针对不平衡数据中的分类问题,提出一种基于旋转森林的改进模型——旋转平衡森林(rotation balanced forest,ROBF).以集成思想为核心,从数据层和算法层相结合的角度出发,针对Safe-Level-Smote方法中存在的模糊类边界问题采取两点改进:安全等级再划分机制;引入约束度不同的控制因子,经改进后...

关 键 词:集成  不平衡数据  分类  旋转森林  合成少数类过采样技术

Classification algorithm of imbalanced data based on rotation balanced forest
ZHOU Er-hao,GAO Shang,SHEN Zhen. Classification algorithm of imbalanced data based on rotation balanced forest[J]. Computer Engineering and Design, 2022, 43(2): 458-464. DOI: 10.16208/j.issn1000-7024.2022.02.022
Authors:ZHOU Er-hao  GAO Shang  SHEN Zhen
Affiliation:(School of Computer,Jiangsu University of Science and Technology,Zhenjiang 212100,China)
Abstract:To solve the classification problem in imbalanced data,an improved model based on rotation forest,namely rotation balanced forest(ROBF),was proposed.Based on the idea of ensemble,and from the perspective of combining the data layer and the algorithm layer,two improvements were designed to solve the fuzzy class boundary problem in the Safe-Level-Smote method including the security level re-division mechanism,and the introduction of control factors with different degrees of constraint.After the improvement,the Hyper-Safe-Level-Smote was obtained.The Hyper-Safe-Level-Smote was combined with the rotation forest model to obtain a rotation balanced forest.Six data sets were selected from the UCI,and the five algorithms were compared to each other.The results show that the ROBF algorithm maintains good classification accuracy with more competitive TPR and G-mean.This result verifies the effectiveness of the ROBF algorithm in dealing with imbalance problems.
Keywords:ensemble  imbalanced data  classification  rotating forest  SMOTE
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