Extracting Threat Intelligence From Cheat Binaries For Anti-Cheating


연구 분야: Cryptography



학회: RAID '23: Proceedings of the 26th International Symposium on Research in Attacks, Intrusions and Defenses


초록

Rampant cheating remains a serious concern for game developers who fear losing loyal customers and revenue. While numerous anti-cheating techniques have been proposed, cheating persists in a vibrant (and profitable) illicit market. Inspired by novel insights into the economics behind cheat development and recent techniques for defending against advanced persistent threats (APTs), we propose a fully automated methodology for extracting “cheat intelligence” from widely distributed cheat binaries to produce a “memory access graph” that guides selective data randomization to yield immune game clients. We have implemented a prototype system for Android and Windows games, CheatFighter, and evaluated it on 86 cheats collected from a variety of real-world sources, including Telegram channels and online forums. CheatFighter successfully counteracts 80 of the real-world cheats in under a minute, demonstrating practical end-to-end protection against widespread cheating.


Author Profile
Md Sakib Anwar

The Ohio State University USA

United States
Author Profile
Chaoshun Zuo

The Ohio State University USA

United States
Author Profile
Carter Yagemann

The Ohio State University United States of America

United States

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발행 연도 2023년
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출판 국가 United States
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