cs.AI updates on arXiv.org 07月03日 12:07
A Framework for Mining Collectively-Behaving Bots in MMORPGs
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本文介绍了一种名为BotTRep的反作弊框架,用于识别MMORPG中的游戏机器人。该框架通过轨迹表示学习和聚类,帮助游戏管理员识别和封禁机器人,保护游戏环境。

arXiv:2501.10461v2 Announce Type: replace-cross Abstract: In MMORPGs (Massively Multiplayer Online Role-Playing Games), abnormal players (bots) using unauthorized automated programs to carry out pre-defined behaviors systematically and repeatedly are commonly observed. Bots usually engage in these activities to gain in-game money, which they eventually trade for real money outside the game. Such abusive activities negatively impact the in-game experiences of legitimate users since bots monopolize specific hunting areas and obtain valuable items. Thus, detecting abnormal players is a significant task for game companies. Motivated by the fact that bots tend to behave collectively with similar in-game trajectories due to the auto-programs, we developed BotTRep, a framework that comprises trajectory representation learning followed by clustering using a completely unlabeled in-game trajectory dataset. Our model aims to learn representations for in-game trajectory sequences so that players with contextually similar trajectories have closer embeddings. Then, by applying DBSCAN to these representations and visualizing the corresponding moving patterns, our framework ultimately assists game masters in identifying and banning bots.

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MMORPG 反作弊 游戏机器人 轨迹表示学习 DBSCAN
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