HQA-Attack: Toward High Quality Black-Box Hard-Label Adversarial Attack on Text Zhi Xu Dalian University of Technology Dalian University of Technology Dalian, China
–Neural Information Processing Systems
Black-box hard-label adversarial attack on text is a practical and challenging task, as the text data space is inherently discrete and non-differentiable, and only the predicted label is accessible. Research on this problem is still in the embryonic stage and only a few methods are available. Nevertheless, existing methods rely on the complex heuristic algorithm or unreliable gradient estimation strategy, which probably fall into the local optimum and inevitably consume numerous queries, thus are difficult to craft satisfactory adversarial examples with high semantic similarity and low perturbation rate in a limited query budget. To alleviate above issues, we propose a simple yet effective framework to generate high quality textual adversarial examples under the black-box hard-label attack scenarios, named HQA-Attack.
Neural Information Processing Systems
Mar-27-2025, 16:09:04 GMT
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- Asia > China > Liaoning Province > Dalian (1.00)
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