• DocumentCode
    2449674
  • Title

    Proactive Insider Threat Detection through Graph Learning and Psychological Context

  • Author

    Brdiczka, Oliver ; Juan Liu ; Price, Bob ; Jianqiang Shen ; Patil, Abhijit ; Chow, Richard ; Bart, Evgeniy ; Ducheneaut, N.

  • Author_Institution
    Palo Alto Res. Center (PARC), Palo Alto, CA, USA
  • fYear
    2012
  • fDate
    24-25 May 2012
  • Firstpage
    142
  • Lastpage
    149
  • Abstract
    The annual incidence of insider attacks continues to grow, and there are indications this trend will continue. While there are a number of existing tools that can accurately identify known attacks, these are reactive (as opposed to proactive) in their enforcement, and may be eluded by previously unseen, adversarial behaviors. This paper proposes an approach that combines Structural Anomaly Detection (SA) from social and information networks and Psychological Profiling (PP) of individuals. SA uses technologies including graph analysis, dynamic tracking, and machine learning to detect structural anomalies in large-scale information network data, while PP constructs dynamic psychological profiles from behavioral patterns. Threats are finally identified through a fusion and ranking of outcomes from SA and PP. The proposed approach is illustrated by applying it to a large data set from a massively multi-player online game, World of War craft (WoW). The data set contains behavior traces from over 350,000 characters observed over a period of 6 months. SA is used to predict if and when characters quit their guild (a player association with similarities to a club or workgroup in non-gaming contexts), possibly causing damage to these social groups. PP serves to estimate the five-factor personality model for all characters. Both threads show good results on the gaming data set and thus validate the proposed approach.
  • Keywords
    behavioural sciences computing; computer games; graph theory; learning (artificial intelligence); organisational aspects; psychology; World of Warcraft; adversarial behaviors; dynamic tracking; five-factor personality model; gaming data; graph analysis; graph learning; information networks; insider attacks; large-scale information network data; machine learning; massively multiplayer online game; organizations; proactive insider threat detection; psychological context; psychological profiling; social groups; social networks; structural anomaly detection; Context; Data models; Games; Hidden Markov models; Psychology; Semantics; Social network services; Graph Learning; Insider Threat Detection; Psychological Context Modeling; Psychological Profiling; Structural Anomaly Detection; World of Warcraft;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Security and Privacy Workshops (SPW), 2012 IEEE Symposium on
  • Conference_Location
    San Francisco, CA
  • Print_ISBN
    978-1-4673-2157-0
  • Type

    conf

  • DOI
    10.1109/SPW.2012.29
  • Filename
    6227698