• DocumentCode
    3717201
  • Title

    SigCO: Mining significant correlations via a distributed real-time computation engine

  • Author

    Tian Guo;Jean-Paul Calbimonte;Hao Zhuang;Karl Aberer

  • Author_Institution
    EPFL, Lausanne, Switzerland
  • fYear
    2015
  • Firstpage
    747
  • Lastpage
    756
  • Abstract
    The dramatic rise of time-series data produced in a variety of contexts, such as stock markets, mobile sensing, sensor networks, data centre monitoring, etc., has fuelled the development of large-scale distributed real-time computation systems (e.g., Apache Storm, Samza, Spark Streaming, S4, etc.). However, it is still unclear how certain time series mining tasks could be performed using such new emerging systems. In this paper, we focus on the task of efficiently discovering statistically significant correlations among a large number of time series via a distributed realtime computation engine. We propose a framework referred to as SigCO. In SigCO, we put forward a novel partition-aware data shuffling, which is able to adaptively shuffle time series data only to the relevant nodes of the distributed real-time computation engine. On the other hand, in SigCO we design a δ-hypercube structure based correlation computation approach which is capable of pruning unnecessary correlation computations. Finally, our extensive experimental evaluations on real and synthetic datasets establish that SigCO outperforms the baseline approaches in terms of diverse performance metrics.
  • Keywords
    "Correlation","Time series analysis","Real-time systems","Engines","Distributed databases","Topology","Data mining"
  • Publisher
    ieee
  • Conference_Titel
    Big Data (Big Data), 2015 IEEE International Conference on
  • Type

    conf

  • DOI
    10.1109/BigData.2015.7363819
  • Filename
    7363819