Loading...
Toggle navigation
Home
About Journal
Editorial Board
Instruction
Subscription
Advertisement
Contact Us
中文
Quarterly,Established in 2013
Administration
National Health Commission of the People's Republic of China
Sponsor
People's Medical Publishing House Co. Ltd.
Editor in Chief:
CHI Yi-fan
ISSN:2095-5308
CN:11-9331/R
Reader Center
Forthcoming Articles
Current Issue
Volumn Content
Archive
Most Read Articles
Most Download Articles
Most Cited Articles
E-mail Alert
RSS
Download
More...
Links
More...
Visited
Total visitors:
Visitors of today:
Now online:
Table of Content
09 January 2025, Volume 42 Issue 3
Previous Issue
Next Issue
Review of anomaly detection methods for time series
#br#
XIE Lixiaa, WANG Jiamina, YANG Hongyua, b, HU Zeb, CHENG Xiangc, ZHANG Liang
2024, 42(3): 1-12.
Asbtract
(
337
)
Related Articles
|
Metrics
Time series is a set of data points or observed values arranged in chronological order, which is widely used in the fields of finance, meteorology and stock market analysis. Abnormalities in these data may mean potential problems, abnormal events or system failures. To facilitate further research on the design of anomaly detection methods for time series in the future, the related concepts of time series anomaly detection are introduced firstly. Secondly, the anomaly detection methods for univariate and multivariate time series at home and abroad are analyzed. After that, some general datasets of anomaly detection for time series are introduced and the performance of common methods on these datasets are compared. Finally, the key research directions on the design of anomaly detection method for time series in the future are discussed, which can provide a reference for relevant theoretical and applied research.