Multi-homed abnormal behavior detection algorithm based on fuzzy particle swarm cluster in user and entity behavior analytics

被引:0
作者
Jingyang Cui
Guanghua Zhang
Zhenguo Chen
Naiwen Yu
机构
[1] Hebei University of Science and Technology,School of Information Science and Engineering
[2] Topsec Network Technology Inc.,Hebei IoT Monitoring Engineering Technology Research Center
[3] North China Institute of Science and Technology,undefined
来源
Scientific Reports | / 12卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
User and entity behavior analytics (UEBA) is an anomaly detection technique that identifies potential threat events in the enterprise's internal threat analysis and external intrusion detection. One limitation of existing methods in UEBA is that many algorithms use deterministic algorithms only for one category labeling and only compare with other samples within this category. In order to improve the efficiency of potential threat identification, we propose a model to detect multi-homed abnormal behavior based on fuzzy particle swarm clustering. Using the behavior frequency-inverse entities frequency (BF-IEF) technology, the method of measuring the similarity of entity and user behavior is optimized. To improve the iterative speed of the fuzzy clustering algorithm, the particle swarm is introduced into the search process of the category centroid. The entity's nearest neighbor relative anomaly factor (NNRAF) in multiple fuzzy categories is calculated according to the category membership matrix, and it is combined with boxplot to detect outliers. Our model solves the problem that the sample in UEBA is evaluated only in one certain class, and the characteristics of the particle swarm optimization algorithm can avoid clustering results falling into local optimal. The results show that compared with the traditional UEBA approach, the abnormal behavior detection ability of the new method is significantly improved, which can improve the ability of information systems to resist unknown threats in practical applications. In the experiment, the accuracy rate, accuracy rate, recall rate, and F1 score of the new method reach 0.92, 0.96, 0.90, and 0.93 respectively, which is significantly better than the traditional abnormal detections.
引用
收藏
相关论文
共 135 条
[1]  
Vivek S(2022)Urban road network vulnerability and resilience to large-scale attacks Saf. Sci. 147 105575-41
[2]  
Conner H(2022)AutoML-ID: Automated machine learning model for intrusion detection using wireless sensor network Sci. Rep. 12 9074-440
[3]  
Singh A(2020)5G URLLC: A case study on low-latency intrusion prevention IEEE Commun. Mag. 58 35-114
[4]  
Amutha J(2020)Machine learning models for secure data analytics: A taxonomy and threat model Comput. Commun. 153 406-303
[5]  
Nagar J(2018)User behavior analytics-based classification of application layer HTTP-GET flood attacks J. Netw. Comput. Appl. 112 97-387
[6]  
Sharma S(2017)Multi-level hybrid support vector machine and extreme learning machine based on modified K-means for intrusion detection system Expert Syst. Appl. 67 296-247
[7]  
Lee C-C(2018)A fast clustering algorithm based on pruning unnecessary distance computations in DBSCAN for high-dimensional data Pattern Recogn. 83 357-64365
[8]  
Gallenmuller S(2021)The detection of low-rate DoS attacks using the SADBSCAN algorithm Inf. Sci. 565 229-283
[9]  
Naab J(2019)Semi-supervised K-means DDoS detection method using hybrid feature selection algorithm IEEE Access 7 64351-59
[10]  
Adam I(2016)A multi-user perspective for personalized email communities Expert Syst. Appl. 54 265-15