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GAN-Aimbots: Using Machine Learning for Cheating in First Person Shooters

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arxiv 2205.07060 v1 pith:56SPUFCO submitted 2022-05-14 cs.AI cs.CRcs.LG

GAN-Aimbots: Using Machine Learning for Cheating in First Person Shooters

classification cs.AI cs.CRcs.LG
keywords gamecheatingplayersvideoautomaticgamesindustrymethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Playing games with cheaters is not fun, and in a multi-billion-dollar video game industry with hundreds of millions of players, game developers aim to improve the security and, consequently, the user experience of their games by preventing cheating. Both traditional software-based methods and statistical systems have been successful in protecting against cheating, but recent advances in the automatic generation of content, such as images or speech, threaten the video game industry; they could be used to generate artificial gameplay indistinguishable from that of legitimate human players. To better understand this threat, we begin by reviewing the current state of multiplayer video game cheating, and then proceed to build a proof-of-concept method, GAN-Aimbot. By gathering data from various players in a first-person shooter game we show that the method improves players' performance while remaining hidden from automatic and manual protection mechanisms. By sharing this work we hope to raise awareness on this issue and encourage further research into protecting the gaming communities.

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