Qi Tan (Shenzhen University), Yi Zhao (Beijing Institute of Technology), Laizhong Cui (Shenzhen University), Qi Li (Tsinghua University), Ming Zhu (Tsinghua University), Xing Fu (Ant Group), Weiqiang Wang (Ant Group), Xiaotong Lin (Ant Group), Ke Xu (Tsinghua University)

Machine learning (ML)-based fraud detection systems are widely employed by enterprises to reduce economic losses from fraudulent activities. However, fraudsters are intelligent and evolve rapidly, employing advanced techniques to falsify the features of transactions to evade the detection system. Worse still, since these falsification processes are not restricted to small intervals, existing robustness enhancement methods based on small-scale perturbations are ineffective. Detecting unrestrictedly perturbed fraudulent activities, which significantly increases uncertainties in fraud detection, is still an open problem.

To resolve this issue, we propose *GAMER*, a robust fraud detection system based on two-player game, achieving both high accuracy and strong robustness in detecting fraudulent activities.
Specifically, *GAMER* leverages feature selection to proactively combat intelligent fraudsters in fraud detection (i.e., selecting fewer features to reduce the combinations of feature falsification), and innovatively formulates the detecting process as a two-player game. By solving the equilibrium of the two-player game, *GAMER* calculates the optimal probability for feature selection, which takes into account all possible falsification strategies of the fraudsters. The equilibrium-based selection probability not only minimizes the profits obtained by fraudsters, demotivating them to launch falsification; but also enables the system to select robust features (i.e., the features that are less likely to be falsified) in detecting fraudulent activities, enhancing the robustness of the system in fraud detection. Our theoretical and experimental results validate the properties of deterrence and robustness enhancement. Moreover, experiments over real-world attacks suffered by the world's leading online payment enterprise demonstrate that *GAMER* outperforms traditional robustness enhancement techniques, which increases the F1 score by 67.5% on average for two-month fraud detection.

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