Status | 即将出版Forthcoming |
Title | Self-Supervised Random Forest on Transformed Distribution for Anomaly Detection |
Creator | |
Date Issued | 2024 |
Source Publication | IEEE Transactions on Neural Networks and Learning Systems
![]() |
ISSN | 2162-237X |
Abstract | Anomaly detection, the task of differentiating abnormal data points from normal ones, presents a significant challenge in the realm of machine learning. Numerous strategies have been proposed to tackle this task, with classification-based methods, specifically those utilizing a self-supervised approach via random affine transformations (RATs), demonstrating remarkable performance on both image and non-image data. However, these methods encounter a notable bottleneck, the overlap of constructed labeled datasets across categories, which hampers the subsequent classifiers’ ability to detect anomalies. Consequently, the creation of an effective data distribution becomes the pivotal factor for success. In this article, we introduce a model called “self-supervised forest (sForest)”, which leverages the random Fourier transform (RFT) and random orthogonal rotations to craft a controlled data distribution. Our model utilizes the RFT to map input data into a new feature space. With this transformed data, we create a self-labeled training dataset using random orthogonal rotations. We theoretically prove that the data distribution formulated by our methodology is more stable compared to one derived from RATs. We then use the self-labeled dataset in a random forest (RF) classifier to distinguish between normal and anomalous data points. Comprehensive experiments conducted on both real and artificial datasets illustrate that sForest outperforms other anomaly detection methods, including distance-based, kernel-based, forest-based, and network-based benchmarks. |
Keyword | Anomaly detection Anomaly detection Classification tree analysis data distribution Forestry Fourier transforms random forest (RF) classifier Random forests random Fourier transform (RFT) random orthogonal rotations self-supervised learning Self-supervised learning Task analysis |
DOI | 10.1109/TNNLS.2023.3348833 |
URL | View source |
Indexed By | SCIE |
Language | 英语English |
WOS Research Area | Computer Science ; Engineering |
WOS Subject | Computer Science, Artificial Intelligence ; Computer Science, Hardware & Architecture ; Computer Science, Theory & Methods ; Engineering, Electrical & Electronic |
WOS ID | WOS:001167457700001 |
Scopus ID | 2-s2.0-85183941915 |
Citation statistics | |
Document Type | Journal article |
Identifier | http://repository.uic.edu.cn/handle/39GCC9TT/11663 |
Collection | Faculty of Science and Technology |
Corresponding Author | Wang, Huadong |
Affiliation | 1.School of Information and Electronics, Beijing Institute of Technology, Beijing, China 2.ModelBest Inc, Beijing, China 3.Department of Applied Mathematics, University of Twente, Enschede, The Netherlands 4.Guangdong Provincial Key Laboratory IRADS and the Department of Mathematical Science, BNU-HKBU United International College, Zhuhai, China 5.Academy of Mathematics and Systems Science, Chinese Academy of Sciences, Beijing, China 6.School of Economics and Management, University of Chinese Academy of Sciences, Beijing, China |
Recommended Citation GB/T 7714 | Liu, Jiabin,Wang, Huadong,Hang, Hanyuanet al. Self-Supervised Random Forest on Transformed Distribution for Anomaly Detection[J]. IEEE Transactions on Neural Networks and Learning Systems, 2024. |
APA | Liu, Jiabin, Wang, Huadong, Hang, Hanyuan, Ma, Shumin, Shen, Xin, & Shi, Yong. (2024). Self-Supervised Random Forest on Transformed Distribution for Anomaly Detection. IEEE Transactions on Neural Networks and Learning Systems. |
MLA | Liu, Jiabin,et al."Self-Supervised Random Forest on Transformed Distribution for Anomaly Detection". IEEE Transactions on Neural Networks and Learning Systems (2024). |
Files in This Item: | There are no files associated with this item. |
Items in the repository are protected by copyright, with all rights reserved, unless otherwise indicated.
Edit Comment