基于多视角注意力网络的在线游戏真钱交易检测

Jianrong Tao, Jianshi Lin, Shize Zhang, Sha Zhao, Runze Wu, Changjie Fan, Peng Cui
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引用次数: 23

摘要

网络游戏是一个价值数十亿美元的产业,吸引了大量的全球玩家。然而,一种不幸的现象被称为真钱交易损害了竞争和乐趣。虚拟货币交易是一种有趣的经济活动,用于将虚拟世界中的资产与现实世界中的货币进行交换,导致游戏经济的不平衡以及财富和机会的不平等。游戏运营团队一直在真金白银交易检测方面投入大量精力,但这仍然是一项具有挑战性的任务。为了克服游戏运营团队传统方法的局限性,我们提出了MVAN,这是第一个使用多视图数据源检测真钱交易的多视图注意力网络。在图结构视图中提出了多图注意网络(MGAT),在顶点内容视图中提出了行为注意网络(BAN),在顶点属性视图中提出了画像注意网络(PAN),在数据源视图中提出了数据源注意网络(DSAN)。在网易一款商业MMORPG(JusticePC)的真实游戏日志上进行的实验表明,随着时间的推移,与其他竞争方法相比,我们的方法始终表现出令人满意的结果,验证了注意机制的重要性和合理性。MVAN在网易的多款mmorpg游戏中进行了实际部署,取得了显著的性能提升和加速。我们的方法可以很容易地推广到现实世界中其他类型的相关任务,如欺诈检测、毒品跟踪、洗钱跟踪等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MVAN: Multi-view Attention Networks for Real Money Trading Detection in Online Games
Online gaming is a multi-billion dollar industry that entertains a large, global population. However, one unfortunate phenomenon known as real money trading harms the competition and the fun. Real money trading is an interesting economic activity used to exchange assets in a virtual world with real world currencies, leading to imbalance of game economy and inequality of wealth and opportunity. Game operation teams have been devoting much efforts on real money trading detection, however, it still remains a challenging task. To overcome the limitation from traditional methods conducted by game operation teams, we propose, MVAN, the first multi-view attention networks for detecting real money trading with multi-view data sources. We present a multi-graph attention network (MGAT) in the graph structure view, a behavior attention network (BAN) in the vertex content view, a portrait attention network (PAN) in the vertex attribute view and a data source attention network (DSAN) in the data source view. Experiments conducted on real-world game logs from a commercial NetEase MMORPG( JusticePC) show that our method consistently performs promising results compared with other competitive methods over time and verifiy the importance and rationality of attention mechanisms. MVAN is deployed to several MMORPGs in NetEase in practice and achieving remarkable performance improvement and acceleration. Our method can easily generalize to other types of related tasks in real world, such as fraud detection, drug tracking and money laundering tracking etc.
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