Coupled Clustering of Time-Series and NetworksOpen Website

2019 (modified: 25 Jan 2023)SDM 2019Readers: Everyone
Abstract: Motivated by the problem of human-trafficking, where it is often observed that criminal organizations are linked and behave similarly over time, we introduce the problem of Coupled Clustering of Time-series and their underlying Network. The goal is to find tightly connected subgroups of nodes that also have similar node-specific time series (temporal—not necessarily structural—behavior). We formulate the problem as a coupled matrix factorization for the time series, combined with regularization for network smoothness. We propose CCTN, and an incrementally-updated counterpart, CCTN-inc, which efficiently handles network updates. Extensive experiments show that CCTN is up to 4x more accurate than baselines that consider graph structure or time series alone, and CCTN-inc is up to 55x faster than CCTN. As an application, we explore an exclusive database with millions of online ads on human trafficking, and successfully deploy our technique to detect criminal organizations.
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