异常检测
计算机科学
机器学习
人工智能
集成学习
子空间拓扑
离群值
随机子空间法
线性子空间
重采样
数据挖掘
班级(哲学)
模式识别(心理学)
一级分类
二元分类
异常(物理)
构造(python库)
基础(拓扑)
支持向量机
数学
数学分析
物理
几何学
程序设计语言
凝聚态物理
作者
Xiayu Liang,Ying Gao,Shanrong Xu
标识
DOI:10.1016/j.eswa.2023.122049
摘要
Nowadays, many classification algorithms have been applied to various industries to help them work out their problems met in real-life scenarios. However, in many binary classification tasks, samples in the minority class only make up a small part of all instances, which leads to the datasets we get usually suffer from high imbalance ratio. Existing models sometimes treat minority classes as noise or ignore them as outliers encountering data skewing. In order to solve this problem, we propose a bagging ensemble learning framework ASE (Anomaly Scoring Based Ensemble Learning). This framework has a scoring system based on anomaly detection algorithms which can guide the resampling strategy by divided samples in the majority class into subspaces. Then specific number of instances will be under-sampled from each subspace to construct subsets by combining with the minority class. And we calculate the weights of base classifiers trained by the subsets according to the classification result of the anomaly detection model and the statistics of the subspaces. Experiments have been conducted which show that our ensemble learning model can dramatically improve the performance of base classifiers and is more efficient than other existing methods under a wide range of imbalance ratio, data scale and data dimension. ASE can be combined with various classifiers and every part of our framework has been proved to be reasonable and necessary.
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