LGMar 19

Robustness, Cost, and Attack-Surface Concentration in Phishing Detection

arXiv:2603.192040.6h-index: 4
Predicted impact top 98% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This addresses security vulnerabilities in phishing detection for deployed systems, showing robustness is incremental and constrained by feature economics rather than model improvements.

The paper tackles the gap between high accuracy and robustness in phishing detectors by analyzing cost-aware evasion, finding that robustness converges across models and is limited by low-cost feature transitions, with median minimal evasion cost of 2 and over 80% of evasions concentrating on three features.

Phishing detectors built on engineered website features attain near-perfect accuracy under i.i.d.\ evaluation, yet deployment security depends on robustness to post-deployment feature manipulation. We study this gap through a cost-aware evasion framework that models discrete, monotone feature edits under explicit attacker budgets. Three diagnostics are introduced: minimal evasion cost (MEC), the evasion survival rate $S(B)$, and the robustness concentration index (RCI). On the UCI Phishing Websites benchmark (11\,055 instances, 30 ternary features), Logistic Regression, Random Forests, Gradient Boosted Trees, and XGBoost all achieve $\mathrm{AUC}\ge 0.979$ under static evaluation. Under budgeted sanitization-style evasion, robustness converges across architectures: the median MEC equals 2 with full features, and over 80\% of successful minimal-cost evasions concentrate on three low-cost surface features. Feature restriction improves robustness only when it removes all dominant low-cost transitions. Under strict cost schedules, infrastructure-leaning feature sets exhibit 17-19\% infeasible mass for ensemble models, while the median MEC among evadable instances remains unchanged. We formalize this convergence: if a positive fraction of correctly detected phishing instances admit evasion through a single feature transition of minimal cost $c_{\min}$, no classifier can raise the corresponding MEC quantile above $c_{\min}$ without modifying the feature representation or cost model. Adversarial robustness in phishing detection is governed by feature economics rather than model complexity.

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