Delayed Backdoor Attacks: Exploring the Temporal Dimension as a New Attack Surface in Pre-Trained Models
Zikang Ding, Haomiao Yang, Meng Hao, Wenbo Jiang, Kunlan Xiang, Runmeng Du, Yijing Liu, Ruichen Zhang, Dusit Niyato

TL;DR
This paper introduces Delayed Backdoor Attacks (DBA), a novel threat exploiting the temporal dimension in pre-trained models, demonstrating that attacks can be delayed and remain effective while evading current defenses.
Contribution
The work presents a new class of backdoor attacks that utilize a temporal delay, along with a prototype implementation and a formal model to characterize and evaluate this attack surface.
Findings
DND achieves high attack success rates after delay
DND maintains high clean accuracy (≥94%)
DND resists several state-of-the-art defenses
Abstract
Backdoor attacks against pre-trained models (PTMs) have traditionally operated under an ``immediacy assumption,'' where malicious behavior manifests instantly upon trigger occurrence. This work revisits and challenges this paradigm by introducing \textit{\textbf{Delayed Backdoor Attacks (DBA)}}, a new class of threats in which activation is temporally decoupled from trigger exposure. We propose that this \textbf{temporal dimension} is the key to unlocking a previously infeasible class of attacks: those that use common, everyday words as triggers. To examine the feasibility of this paradigm, we design and implement a proof-of-concept prototype, termed \underline{D}elayed Backdoor Attacks Based on \underline{N}onlinear \underline{D}ecay (DND). DND embeds a lightweight, stateful logic module that postpones activation until a configurable threshold is reached, producing a distinct latency…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Advanced Malware Detection Techniques · Security and Verification in Computing
