Title :
Fast event detection on big time series
Author :
Shusi Yu ; Lei Gu ; Wentao Dai
Author_Institution :
IT Oper. Center Shanghai Branch of China Telecom Corp. Ltd., Shanghai, China
Abstract :
Big data is exploding to facilitate our humans living by embedding smart devices everywhere, collecting realtime data, learning the daily habits and making the machines smarter. In addition to great advance in distributed computing with petabyte data, fast and real-time reaction on streaming data, which is know as fast event detection(FED) or anomaly detection, obtain wide attention which has a wide application in online fraud monitoring. In this paper, inspired by the time series analysis technique, a new algorithm of event detection is proposed to detect anomalous event. The proposed algorithm extensively reduce computation complexity of event detection from exponential to polynomial, which implies acceleration of more than thousand time. Verifications on four data sets confirm our theoretical prediction and promises fruitful results in further applications.
Keywords :
Big Data; distributed processing; fraud; security of data; time series; Big data; anomalous event detection; anomaly detection; big time series; data sets; distributed computing; fast event detection; online fraud monitoring; petabyte data; realtime data; smart devices; streaming data; time series analysis technique; Big data; Complexity theory; Data mining; Event detection; Monitoring; Social network services; Time series analysis;
Conference_Titel :
Communications in China (ICCC), 2014 IEEE/CIC International Conference on
Conference_Location :
Shanghai
DOI :
10.1109/ICCChina.2014.7008296