Abstract
In order to improve the accuracy and recall rate of the clustering mining process of large-scale network abnormal data and shorten the time of clustering mining, in this study, a large-scale network anomaly data clustering mining method based on selective collaborative learning is proposed. Through cooperative training and selective ensemble learning, a machine learning anomaly detection model and a strong classifier for large-scale network data are designed, and the correlation variable analysis method is used to obtain the dissimilarity measure of data. The network anomaly data is processed by fuzzy fusion, and the nearest neighbor algorithm is used to realize the clustering mining of large scale network anomaly data. The data clustering mining accuracy of this method reaches 98.16%, the time of data clustering mining is only 2.5 s, and the recall rate of data clustering mining is up to 98.38%, indicating that this method can improve the effect of large-scale network anomaly data clustering mining.
Subject
Computational Mathematics,Computer Science Applications,General Engineering
Reference17 articles.
1. Research on automatic identification algorithm of abnormal data in power monitoring based on moving wavelet tree;Xia;Electr Des Eng.,2020
2. A data mining method using deep learning for anomaly detection in cloud computing environment;Gao;Math Probl Eng.,2020
3. A hybrid data mining approach for anomaly detection and evaluation in residential buildings energy data;Xu;Energy Build.,2020
4. Unsupervised anomaly detection with LSTM neural networks;Ergen;IEEE Trans Neural Networks Learn Syst.,2020
5. Anomaly analysis algorithm of optical fiber network based on Bayesian partition data mining;Liu;Infrared Laser Eng.,2021