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一种基于XGboost的异常检测算法
引用本文:陈适宜. 一种基于XGboost的异常检测算法[J]. 数字社区&智能家居, 2021, 0(2): 188-189,201
作者姓名:陈适宜
作者单位:同济大学
摘    要:为了提高异常检测的准确性和高效性,提出了基于xgboost的异常检测算法.首先对异常检测当前遇到的挑战进行分析,指出缺少样本和模型泛化是异常检测中的难点.在此基础上设计了异常注入算法,利用3sigma原则对数据集进行扩充;然后设计特征提取器,针对正常数据和异常数据的特点设计相关特征;最后选择xgboost模型对时序数据...

关 键 词:异常检测  xgboost  异常注入  特征提取  智能运维

An Anomaly Detection Model Based on XGboost
CHEN Shi-yi. An Anomaly Detection Model Based on XGboost[J]. Digital Community & Smart Home, 2021, 0(2): 188-189,201
Authors:CHEN Shi-yi
Affiliation:(Tongji University,Shanghai 021804,China)
Abstract:In order to improve the accuracy and efficiency of anomaly detection,an anomaly detection algorithm based on xgboost is proposed.First,analyze the current challenges of anomaly detection,and point out that lack of samples and model generalization are the difficulties in anomaly detection.On this basis,an anomaly injection algorithm is designed,and the data set is expanded us?ing the 3sigma principle;then a feature extractor is designed to design related features according to the characteristics of normal da?ta and abnormal data;finally,the xgboost model is selected to perform anomaly detection on time series data.This anomaly detec?tion process improves the accuracy and generalization ability of anomaly detection.Through experiments on the KPI public data set,the accuracy and effectiveness of the design are verified.
Keywords:anomaly detection  xgboost  anomaly injection  feature extraction  AIOPS
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