Abstract
Cheating in online video games compromises the integrity of gaming experiences. Anti-cheat systems, such as VAC (Valve Anti-Cheat), face significant challenges in keeping pace with evolving cheating methods without imposing invasive measures on users' systems. This paper presents AntiCheatPT_256, a transformer-based machine learning model designed to detect cheating behaviour in Counter-Strike 2 using gameplay data. To support this, we introduce and publicly release CS2CD: A labelled dataset of 795 matches. Using this dataset, 90,707 context windows were created and subsequently augmented to address class imbalance. The transformer model, trained on these windows, achieved an accuracy of 89.17% and an AUC of 93.36% on an unaugmented test set. This approach emphasizes reproducibility and real-world applicability, offering a robust baseline for future research in data-driven cheat detection.
| Originalsprog | Engelsk |
|---|---|
| Titel | 2025 IEEE Conference on Games |
| Forlag | IEEE |
| Publikationsdato | 2025 |
| DOI | |
| Status | Udgivet - 2025 |
| Begivenhed | Conference on Games - Instituto Superior Tecnico, Lisbon, Portugal Varighed: 26 aug. 2025 → 29 aug. 2025 Konferencens nummer: 7 https://cog2025.inesc-id.pt/ |
Konference
| Konference | Conference on Games |
|---|---|
| Nummer | 7 |
| Lokation | Instituto Superior Tecnico |
| Land/Område | Portugal |
| By | Lisbon |
| Periode | 26/08/2025 → 29/08/2025 |
| Internetadresse |
Fingeraftryk
Dyk ned i forskningsemnerne om 'AntiCheatPT: A Transformer-Based Approach to Cheat Detection in Competitive Computer Games'. Sammen danner de et unikt fingeraftryk.Forskningsdatasæt
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CS2CD.Counter-Strike_2_Cheat_Detection
Loo, M. M. Z. (Ophavsmand), Lužkov, G. (Ophavsmand) & Burelli, P. (Vejleder), Hugging Face, 2025
DOI: 10.57967/hf/5315, https://huggingface.co/datasets/CS2CD/CS2CD.Counter-Strike_2_Cheat_Detection
Datasæt: Software
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