Title :
Data series forecasting and anomaly detection methods based on online least squares support vector machine
Author :
Yang Yanxi ; Hou Ningning
Author_Institution :
Xi´an Univ. of Technol., Xi´an, China
Abstract :
Currently, Data series forecasting and anomaly detection methods are mostly off-line and no dynamic prediction function, which is quite detrimental to the data series real-time processing. This paper studies the online least squares support vector machine algorithm, based on its sub-block matrix inversion principle, guarantees the data stream processing speed, but also to meet the data sequence stability on-line prediction requirements, at the same time, At the same time, based on the original algorithm on the increase in threshold judgment link, using a type of membership degree method for anomaly judgment, making online least squares support vector machine algorithm can detect abnormal data stream effectively. The simulation results show the effectiveness of online least squares support vector machine algorithm for online prediction and anomaly detection application.
Keywords :
least squares approximations; matrix inversion; security of data; support vector machines; abnormal data stream detection; anomaly detection methods; anomaly judgment; data sequence stability online prediction requirements; data series forecasting; data series real-time processing; data stream processing speed; membership degree method; online least squares support vector machine algorithm; subblock matrix inversion principle; threshold judgment link; Conferences; Educational institutions; Electronic mail; Forecasting; Prediction algorithms; Process control; Support vector machines; Application membership; Online least squares support vector machine algorithm; Threshold determination;
Conference_Titel :
Control Conference (CCC), 2013 32nd Chinese
Conference_Location :
Xi´an