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Link Prediction Adversarial Attack

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abstract

Deep neural network has shown remarkable performance in solving computer vision and some graph evolved tasks, such as node classification and link prediction. However, the vulnerability of deep model has also been revealed by carefully designed adversarial examples generated by various adversarial attack methods. With the wider application of deep model in complex network analysis, in this paper we define and formulate the link prediction adversarial attack problem and put forward a novel iterative gradient attack (IGA) based on the gradient information in trained graph auto-encoder (GAE). To our best knowledge, it is the first time link prediction adversarial attack problem is defined and attack method is brought up. Not surprisingly, GAE was easily fooled by adversarial network with only a few links perturbed on the clean network. By conducting comprehensive experiments on different real-world data sets, we can conclude that most deep model based and other state-of-art link prediction algorithms cannot escape the adversarial attack just like GAE. We can benefit the attack as an efficient privacy protection tool from link prediction unknown violation, on the other hand, link prediction attack can be a robustness evaluation metric for current link prediction algorithm in attack defensibility.

fields

cs.LG 1

years

2026 1

verdicts

UNVERDICTED 1

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representative citing papers

The Confidence Trap: Calibration Attacks for Graph Neural Networks

cs.LG · 2026-06-07 · unverdicted · novelty 6.0

UGCA increases Expected Calibration Error of GNNs under adversarial edge perturbations while preserving classification accuracy, with theoretical links between model accuracy, dataset complexity, and vulnerability.

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  • The Confidence Trap: Calibration Attacks for Graph Neural Networks cs.LG · 2026-06-07 · unverdicted · none · ref 3 · internal anchor

    UGCA increases Expected Calibration Error of GNNs under adversarial edge perturbations while preserving classification accuracy, with theoretical links between model accuracy, dataset complexity, and vulnerability.