LGDec 16, 2023

TrojFair: Trojan Fairness Attacks

arXiv:2312.10508v16 citationsh-index: 21LAMPS@CCS
Originality Incremental advance
AI Analysis

This addresses a critical security gap in fairness algorithms for high-stakes applications like healthcare and finance, though it is incremental as it builds on existing Trojan attack research.

The paper tackles the vulnerability of fair deep learning models to malicious attacks by introducing TrojFair, a Trojan fairness attack that achieves over 88.77% success rate in causing discriminatory behaviors with minimal accuracy loss.

Deep learning models have been incorporated into high-stakes sectors, including healthcare diagnosis, loan approvals, and candidate recruitment, among others. Consequently, any bias or unfairness in these models can harm those who depend on such models. In response, many algorithms have emerged to ensure fairness in deep learning. However, while the potential for harm is substantial, the resilience of these fair deep learning models against malicious attacks has never been thoroughly explored, especially in the context of emerging Trojan attacks. Moving beyond prior research, we aim to fill this void by introducing \textit{TrojFair}, a Trojan fairness attack. Unlike existing attacks, TrojFair is model-agnostic and crafts a Trojaned model that functions accurately and equitably for clean inputs. However, it displays discriminatory behaviors \text{-} producing both incorrect and unfair results \text{-} for specific groups with tainted inputs containing a trigger. TrojFair is a stealthy Fairness attack that is resilient to existing model fairness audition detectors since the model for clean inputs is fair. TrojFair achieves a target group attack success rate exceeding $88.77\%$, with an average accuracy loss less than $0.44\%$. It also maintains a high discriminative score between the target and non-target groups across various datasets and models.

Foundations

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