Year
2023
File Attachment
finalpaper_297_0509053842.pdf491.5 KB
Abstract
Recent trends in insider threat for critical facilities have shifted focus toward determining the
potential for a successful insider act. Consider, for example, Homeland Security’s Cyber and
Infrastructure Security Agency (DHS/CISA) 2020 Insider Threat Mitigation Guide, which
defines insider threat as “the potential for an insider to use access or special understanding of an
organization to harm that organization.” This shift suggests a range of drivers of “the potential
for an insider” to act—expanding beyond traditional insider threat mitigation programs that
heavily emphasize preventative and protective strategies to deter the behavior of bad actors.
Ongoing research at Sandia National Laboratories and the University of Texas—in support of
international efforts to improve insider threat mitigation for nuclear facilities (e.g., International
Atomic Energy Agency INFCIRC/908) for the United States National Nuclear Security
Administration’s Office of International Security (NNSA/INS)—investigates the impact of
shifting insider threat detection and mitigation (ITDM) from a sole focus on identifying and
deterring malevolent individuals behaviors toward including collective workplace behaviors
observed in nuclear facilities. This new approach to ITDM builds on continuing research that
invokes artificial neural networks to capture, collate, and analyze disparate data signals to
quantitatively describe operational workplace patterns in search of identifying risk significant
insiders. Combining key concepts from organization science and nuclear safety, this paper offers
a revised approach to insider threat mitigation based on risk significance, a measure of the
capability that an individual possesses to successfully carry out an insider plot. We argue that
individual-level deviations from expected workplace behaviors may be indicative of increasing
risk significance. We further propose a series of experiments and discuss whether artificial neural
networks can aid us in generating measures of expected workplace behavior and thus also
capture risk significant deviations.