Discovering semantics from multiple correlated time series stream


Autoria(s): Qiao, Zhi; Huang, Guangyan; He, Jing; Zhang, Peng; Guo, Li; Cao, Jie; Zhang, Yanchun
Data(s)

01/01/2013

Resumo

In this paper, we study a challenging problem of mining data generating rules and state transforming rules (i.e., semantics) underneath multiple correlated time series streams. A novel Correlation field-based Semantics Learning Framework (CfSLF) is proposed to learn the semantic. In the framework, we use Hidden Markov Random Field (HMRF) method to model relationship between latent states and observations in multiple correlated time series to learn data generating rules. The transforming rules are learned from corresponding latent state sequence of multiple time series based on Markov chain character. The reusable semantics learned by CfSLF can be fed into various analysis tools, such as prediction or anomaly detection. Moreover, we present two algorithms based on the semantics, which can later be applied to next-n step prediction and anomaly detection. Experiments on real world data sets demonstrate the efficiency and effectiveness of the proposed method. © Springer-Verlag 2013.

Identificador

http://hdl.handle.net/10536/DRO/DU:30083697

Idioma(s)

eng

Publicador

Springer

Relação

http://dro.deakin.edu.au/eserv/DU:30083697/huang-discoveringsemantics-2013.pdf

http://dro.deakin.edu.au/eserv/DU:30083697/huang-discoveringsemantics-evid--2013.pdf

http://www.dx.doi.org/10.1007/978-3-642-37456-2_43

Direitos

2013, Springer

Tipo

Conference Paper