Finding Emergent Patterns of Behaviors in Dynamic Heterogeneous Social Networks
The search in graph databases for individuals or entities undertaking latent or emergent behaviors has applicability in the areas of homeland security, consumer analytics, behavioral health, and cybersecurity. In this setting, even partial matches to hypothesized indicators are worthy of further inv...
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Veröffentlicht in: | IEEE transactions on computational social systems 2019-10, Vol.6 (5), p.1007-1019 |
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Sprache: | eng |
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Zusammenfassung: | The search in graph databases for individuals or entities undertaking latent or emergent behaviors has applicability in the areas of homeland security, consumer analytics, behavioral health, and cybersecurity. In this setting, even partial matches to hypothesized indicators are worthy of further investigation, and analysts in these domains aim to identify and maintain awareness of entities that either fully or partially match the queried attributes over time. We provide a comprehensive version of a graph pattern matching technique called Investigative Search for Graph Trajectories (INSiGHT) to find emergent patterns of behaviors in networks and tailor the application to detecting radicalization in the homeland security domain. To enable analysts' accounting of recurring behavioral indicators and the recency of behaviors as the imminence of a threat, we provide parameterized methods to score multiple occurrences of indicators and to dampen the significance of indicators over time, respectively. Additionally, we provide an indicator categorization scheme and a match filtering technique to ensure that partial matches to the most salient indicators are identified while reducing the number of false positives. Furthermore, since individuals may be radicalized in small groups or be involved in collective terrorist plots, we introduce a non-combinatorial neighborhood matching technique that enables analysts to use INSiGHT to identify potential query matches from clusters of individuals who may be operating in conspiracies. We demonstrate the performance of our approach using a synthetic radicalization data set and a large, real-world data set of the BlogCatalog social network. |
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ISSN: | 2329-924X 2329-924X 2373-7476 |
DOI: | 10.1109/TCSS.2019.2938787 |