Routing Cybersecurity Awareness Training by FFM Personality Trait: A Quasi-Experimental Evaluation
Abstract
Cybersecurity awareness training has historically adopted a one-size-fits-all approach, despite established individual differences in how users process and retain security information. Personality has been proposed as one axis along which training content might be tailored; yet no prior study has implemented and empirically evaluated a complete personality-conditional system end-to-end. This paper reports the design, implementation, and quasi-experimental evaluation of TailoredSec, a mobile cybersecurity awareness application that routes training content based on a user's dominant Five-Factor Model (FFM) personality trait, as measured by the ten-item Big Five Inventory (BFI-10). Seventy-four UK-based adults were allocated to a traditional video-training condition (n = 40) or a personality-conditional condition (n = 34). Both groups completed a four-item scenario-based pre-assessment (scored 0--40), a single training session, and an equivalent post-assessment. The personality-conditional group additionally completed the BFI-10 (Big Five Inventory-10) and was routed to one of four training modules covering five FFM traits (Conscientiousness and Neuroticism share a module). Pre-assessment scores did not differ between groups (t(69.1) = 0.43, p = .67), confirming baseline equivalence. The personality-conditional group scored significantly higher on the post-assessment (M = 35.88, SD = 5.00 vs M = 30.75, SD = 10.23; Welch's t(58.5) = 2.81, p = .007; Cohen's d = 0.62; 95\% CI [1.47, 8.79] marks), with a pass-rate of 100\% versus 77.5\% (Fisher's exact p < .01). These results offer preliminary support for personality-conditional content routing as a feasible design principle for cybersecurity awareness training.
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