Guarding the Gate: ConceptGuard Battles Concept-Level Backdoors in Concept Bottleneck Models
The increasing complexity of AI models, especially in deep learning, has raised concerns about transparency and accountability, particularly in high-stakes applications like medical diagnostics, where opaque models can undermine trust. Explainable Artificial Intelligence (XAI) aims to address these...
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Zusammenfassung: | The increasing complexity of AI models, especially in deep learning, has
raised concerns about transparency and accountability, particularly in
high-stakes applications like medical diagnostics, where opaque models can
undermine trust. Explainable Artificial Intelligence (XAI) aims to address
these issues by providing clear, interpretable models. Among XAI techniques,
Concept Bottleneck Models (CBMs) enhance transparency by using high-level
semantic concepts. However, CBMs are vulnerable to concept-level backdoor
attacks, which inject hidden triggers into these concepts, leading to
undetectable anomalous behavior. To address this critical security gap, we
introduce ConceptGuard, a novel defense framework specifically designed to
protect CBMs from concept-level backdoor attacks. ConceptGuard employs a
multi-stage approach, including concept clustering based on text distance
measurements and a voting mechanism among classifiers trained on different
concept subgroups, to isolate and mitigate potential triggers. Our
contributions are threefold: (i) we present ConceptGuard as the first defense
mechanism tailored for concept-level backdoor attacks in CBMs; (ii) we provide
theoretical guarantees that ConceptGuard can effectively defend against such
attacks within a certain trigger size threshold, ensuring robustness; and (iii)
we demonstrate that ConceptGuard maintains the high performance and
interpretability of CBMs, crucial for trustworthiness. Through comprehensive
experiments and theoretical proofs, we show that ConceptGuard significantly
enhances the security and trustworthiness of CBMs, paving the way for their
secure deployment in critical applications. |
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DOI: | 10.48550/arxiv.2411.16512 |