Dangoron: Network Construction on Large-scale Time Series Data across Sliding Windows
April 11, 2023 Β· Declared Dead Β· π SIGMOD Conference Companion
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Authors
Yunlong Xu, Peizhen Yang, Zhengbin Tao
arXiv ID
2304.12085
Category
physics.soc-ph
Cross-listed
cs.DB
Citations
0
Venue
SIGMOD Conference Companion
Last Checked
3 months ago
Abstract
Complex networks represent system dynamics through the interactions of a set of anomalous time series. Consider the problem of computing correlations for highly correlated pairs of time series across sliding windows. Efficiently computing and updating the correlation matrix for user-defined sliding periods and thresholds enables large-scale time series network dynamics analysis. We introduce Dangoron, a framework for effectively identifying highly correlated pairs of time series over sliding windows and computing their exact correlation. By predicting dynamic correlation across sliding windows and pruning unrelated time series, Dangoron is at least an order of magnitude faster than a baseline. Additionally, we propose Tomborg, the first benchmark for the problem of correlation matrix computation.
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