Show simple item record

dc.contributor.authorHuang, Chengqiang
dc.date.accessioned2018-10-18T15:55:21Z
dc.date.issued2018-06-20
dc.description.abstractAnomaly detection is a fundamental research topic that has been widely investigated. From critical industrial systems, e.g., network intrusion detection systems, to people’s daily activities, e.g., mobile fraud detection, anomaly detection has become the very first vital resort to protect and secure public and personal properties. Although anomaly detection methods have been under consistent development over the years, the explosive growth of data volume and the continued dramatic variation of data patterns pose great challenges on the anomaly detection systems and are fuelling the great demand of introducing more intelligent anomaly detection methods with distinct characteristics to cope with various needs. To this end, this thesis starts with presenting a thorough review of existing anomaly detection strategies and methods. The advantageous and disadvantageous of the strategies and methods are elaborated. Afterward, four distinctive anomaly detection methods, especially for time series, are proposed in this work aiming at resolving specific needs of anomaly detection under different scenarios, e.g., enhanced accuracy, interpretable results, and self-evolving models. Experiments are presented and analysed to offer a better understanding of the performance of the methods and their distinct features. To be more specific, the abstracts of the key contents in this thesis are listed as follows: 1) Support Vector Data Description (SVDD) is investigated as a primary method to fulfill accurate anomaly detection. The applicability of SVDD over noisy time series datasets is carefully examined and it is demonstrated that relaxing the decision boundary of SVDD always results in better accuracy in network time series anomaly detection. Theoretical analysis of the parameter utilised in the model is also presented to ensure the validity of the relaxation of the decision boundary. 2) To support a clear explanation of the detected time series anomalies, i.e., anomaly interpretation, the periodic pattern of time series data is considered as the contextual information to be integrated into SVDD for anomaly detection. The formulation of SVDD with contextual information maintains multiple discriminants which help in distinguishing the root causes of the anomalies. 3) In an attempt to further analyse a dataset for anomaly detection and interpretation, Convex Hull Data Description (CHDD) is developed for realising one-class classification together with data clustering. CHDD approximates the convex hull of a given dataset with the extreme points which constitute a dictionary of data representatives. According to the dictionary, CHDD is capable of representing and clustering all the normal data instances so that anomaly detection is realised with certain interpretation. 4) Besides better anomaly detection accuracy and interpretability, better solutions for anomaly detection over streaming data with evolving patterns are also researched. Under the framework of Reinforcement Learning (RL), a time series anomaly detector that is consistently trained to cope with the evolving patterns is designed. Due to the fact that the anomaly detector is trained with labeled time series, it avoids the cumbersome work of threshold setting and the uncertain definitions of anomalies in time series anomaly detection tasks.en_GB
dc.identifier.citationC. Huang, Y. Wu, G. Min, Y. Ying, Kernelized Convex Hull Approximation and its Applications in Data Description Tasks, The 2018 International Joint Conference on Neural Networks (IJCNN), accepted to appear, 2018.en_GB
dc.identifier.citationC. Huang, Y. Wu, Y. Zuo, K. Pei, G. Min, Towards Experienced Anomaly Detector through Reinforcement Learning, The 32nd AAAI Conference on Artificial Intelligence (AAAI Student Abstract), accepted to appear, 2018.en_GB
dc.identifier.citationC. Huang, G. Min, Y. Wu, Y. Ying, K. Pei, Z. Xiang, Time Series Anomaly Detection for Trustworthy Services in Cloud Computing Systems, IEEE Transactions on Big Data, accepted to appear, 2017.en_GB
dc.identifier.citationC. Huang, Y. Wu, Y. Zuo, G. Min, Towards Practical Anomaly Detection in Network Big Data, Big Data and Computational Intelligence in Networking, Y. Wu, F. Hu, G. Min, A. Zomaya (editors.), Taylor & Francis/CRC, ISBN: 978-1498784863, Chapter 17, 2017.en_GB
dc.identifier.citationC. Huang, Z. Yu, G. Min, Y. Zuo, K. Pei, Z. Xiang, J. Hu, Y. Wu, Towards Better Anomaly Interpretation of Intrusion Detection in Cloud Computing Systems, IEEE COMSOC MMTC Communications - Frontiers, vol. 12, no. 2, pp. 28-32, 2017.en_GB
dc.identifier.urihttp://hdl.handle.net/10871/34351
dc.language.isoenen_GB
dc.publisherUniversity of Exeteren_GB
dc.subjectanomaly detectionen_GB
dc.subjectnovelty detectionen_GB
dc.subjectdata descriptionen_GB
dc.titleFeatured Anomaly Detection Methods and Applicationsen_GB
dc.typeThesis or dissertationen_GB
dc.date.available2018-10-18T15:55:21Z
dc.contributor.advisorMin, Geyong
dc.publisher.departmentComputer Scienceen_GB
dc.type.degreetitlePhD in Computer Scienceen_GB
dc.type.qualificationlevelDoctoralen_GB
dc.type.qualificationnamePhDen_GB


Files in this item

This item appears in the following Collection(s)

Show simple item record