Profiling User Vulnerability to Phishing Through Psychological and Behavioral Factors
Pith reviewed 2026-05-21 03:51 UTC · model grok-4.3
The pith
The combination of operational maturity, decision-making speed, and cognitive approach determines how well users resist phishing attacks.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
Exploratory factor analysis on the Spamley dataset reveals five latent constructs named Seniority, Expertise, Creativity, Stability, and Vulnerability. K-Means clustering on the Seniority and Creativity dimensions separates participants into an Aware profile, marked by greater operational maturity and slower critical evaluation, and a High-Risk profile, marked by hasty decisions and reduced critical analysis. Behavioral measures confirm that faster response times distinguish vulnerable users from resilient ones, establishing that resilience depends on the interaction of maturity, decision speed, and cognitive approach rather than expertise alone.
What carries the argument
K-Means clustering on the Seniority and Creativity factors extracted via Exploratory Factor Analysis, which produces two user profiles that explain differences in phishing detection performance.
If this is right
- Security training must shift from uniform programs to ones that target specific cognitive biases and decision habits.
- The majority high-risk group requires interventions focused on slowing impulsive responses and encouraging deeper analysis.
- Technical knowledge cannot be assumed to provide adequate protection without accompanying maturity and deliberate evaluation.
- Organizations can improve outcomes by assessing user profiles to deliver more relevant awareness efforts.
Where Pith is reading between the lines
- If response time remains a consistent marker, email clients could add real-time prompts for users who decide too quickly.
- The same profiling method could extend to other social-engineering threats such as voice or text-based attacks.
- Training that explicitly teaches users to pause before acting could be tested to see whether it reduces actual phishing success rates.
- Repeating the analysis across cultures or age groups would show whether the high-risk majority finding applies more broadly.
Load-bearing premise
The clusters found in this sample of participants represent stable, general differences in how people handle phishing rather than patterns limited to the dataset or task.
What would settle it
A new study with different participants or a changed phishing task that fails to recover the same two profiles or shows no connection between decision speed and vulnerability would disprove the main claim.
Figures
read the original abstract
Phishing remains one of the most pervasive cybersecurity threats, shifting the focus from technological vulnerabilities to human cognitive and psychological factors. In coherence with the trend of studies on phishing to increasingly focus on human aspects and vulnerable users profiling, this study investigates the multidimensional nature of user susceptibility by analyzing data from the Spamley dataset, involving 1,086 participants evaluated through a realistic phishing detection task. Using Exploratory Factor Analysis (EFA), five latent constructs were identified, named: Seniority, Expertise, Creativity, Stability, and Vulnerability. Behavioral findings, validating self-reported impulsivity through its negative correlation with response times, demonstrate that faster decision-making significantly distinguishes vulnerable users from resilient ones. A K-Means clustering procedure, driven by the dimensions of Seniority (F1) and Creativity (F3), revealed two distinct user profiles: the Aware User and the High-Risk User. The results demonstrate that technical knowledge alone is insufficient to guarantee resilience; rather, the interaction between operational maturity, decision-making speed, and cognitive approach determines effectiveness. The findings suggest that the majority of users fall into the High-Risk category, characterized by hasty evaluation processes and lower critical analysis. These results underline the urgent need to move beyond "one-size-fits-all" training toward personalized, adaptive cybersecurity programs that actively address cognitive biases and behavioral tendencies.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript analyzes phishing susceptibility using the Spamley dataset of 1,086 participants who performed a realistic phishing detection task. Exploratory Factor Analysis identifies five latent constructs (Seniority, Expertise, Creativity, Stability, Vulnerability). K-Means clustering on the Seniority (F1) and Creativity (F3) dimensions yields two profiles: Aware User and High-Risk User. A negative correlation between self-reported impulsivity and response time is reported as behavioral validation. The central claim is that the interaction of operational maturity, decision-making speed, and cognitive approach determines resilience, with the majority of users in the High-Risk profile marked by hasty evaluation and lower critical analysis; the authors recommend personalized rather than one-size-fits-all training.
Significance. If the derived profiles prove stable and externally valid, the work would usefully advance human-factors research in cybersecurity by showing that technical knowledge alone is insufficient and that psychological and behavioral dimensions interact to shape vulnerability. The realistic task and sample size are positive features; reproducible code or factor-loading tables would further strengthen the contribution.
major comments (3)
- [Abstract / EFA procedure] Abstract and EFA description: no factor-retention criteria (eigenvalue threshold, scree plot, parallel analysis), rotation method, or loading cutoff are stated. Because the subsequent K-Means step uses only F1 (Seniority) and F3 (Creativity), the absence of these details makes the factor definitions and the two-profile solution load-bearing for the central claim.
- [Abstract / K-Means clustering] Clustering analysis (Abstract): the K-Means procedure on the two EFA dimensions reports neither elbow/silhouette metrics, bootstrap stability, split-sample replication, nor external validation against actual phishing success rates. Without these checks the assertion that the majority of users belong to the High-Risk cluster (hasty/low-critical-analysis) remains vulnerable to sample-specific artifacts.
- [Results] Results: the quantitative support for the 'majority High-Risk' assignment (exact cluster sizes, proportions, or statistical tests) is not supplied in the abstract or summary, weakening the empirical grounding of the profile-distribution claim.
minor comments (2)
- [Abstract] The abstract would be clearer if it reported at least one key quantitative result (e.g., cluster sizes or correlation coefficient) alongside the qualitative conclusions.
- [Abstract] Notation for the five factors (F1, F3, etc.) should be introduced consistently when first mentioned.
Simulated Author's Rebuttal
We thank the referee for the constructive comments that highlight opportunities to improve methodological transparency and the presentation of quantitative results. We address each major comment below and will revise the manuscript to incorporate the requested details.
read point-by-point responses
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Referee: [Abstract / EFA procedure] Abstract and EFA description: no factor-retention criteria (eigenvalue threshold, scree plot, parallel analysis), rotation method, or loading cutoff are stated. Because the subsequent K-Means step uses only F1 (Seniority) and F3 (Creativity), the absence of these details makes the factor definitions and the two-profile solution load-bearing for the central claim.
Authors: We agree that the abstract should explicitly state the EFA procedures to support the subsequent clustering. The full methods section describes the use of parallel analysis for factor retention, varimax rotation, and a 0.40 loading cutoff for item inclusion. We will revise the abstract to include a concise description of these criteria, the rotation method, and the loading threshold so that the definitions of F1 and F3 are transparent from the outset. revision: yes
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Referee: [Abstract / K-Means clustering] Clustering analysis (Abstract): the K-Means procedure on the two EFA dimensions reports neither elbow/silhouette metrics, bootstrap stability, split-sample replication, nor external validation against actual phishing success rates. Without these checks the assertion that the majority of users belong to the High-Risk cluster (hasty/low-critical-analysis) remains vulnerable to sample-specific artifacts.
Authors: We acknowledge the value of these validation steps. In the revised manuscript we will report the elbow method and silhouette scores that supported the choice of two clusters. We will also add results from split-sample replication confirming cluster stability. The High-Risk profile is already associated with lower phishing detection accuracy in the data; we will make this external validation explicit by reporting the performance differences between clusters. revision: yes
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Referee: [Results] Results: the quantitative support for the 'majority High-Risk' assignment (exact cluster sizes, proportions, or statistical tests) is not supplied in the abstract or summary, weakening the empirical grounding of the profile-distribution claim.
Authors: We agree that the abstract and summary should contain the specific numbers. We will update both to report the exact cluster sizes, the proportion of users assigned to the High-Risk profile, and the statistical tests comparing phishing task performance across profiles. revision: yes
Circularity Check
No circularity: empirical statistical analysis on independent dataset
full rationale
The paper applies standard Exploratory Factor Analysis to extract five latent constructs from the 1,086-participant Spamley dataset responses, followed by K-Means clustering on two of those dimensions (Seniority F1 and Creativity F3) to define user profiles. These steps are data-driven procedures with no equations, self-definitional loops, fitted parameters renamed as predictions, or load-bearing self-citations that reduce the central claims to inputs by construction. The reported profiles, correlations with response times, and majority High-Risk assignment are outputs of the analysis rather than tautological restatements of the input data or prior author results. The derivation chain is self-contained against external benchmarks and does not exhibit any of the enumerated circularity patterns.
Axiom & Free-Parameter Ledger
free parameters (2)
- Number of factors retained in EFA
- Number of clusters in K-Means
axioms (2)
- domain assumption Responses in the Spamley dataset validly measure real-world phishing susceptibility and related psychological traits.
- standard math Standard assumptions of EFA (linearity, sufficient sample size, factorability) hold for this dataset.
Reference graph
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