Department of Information Security, School of Cybersecurity, Korea University, Seoul 02841, Korea.
Center for Information Security Technology (CIST), Korea University, Seoul 02841, Korea.
Sensors (Basel). 2021 Mar 13;21(6):2039. doi: 10.3390/s21062039.
During the past decade, the technological advancement have allowed the gambling industry worldwide to deploy various platforms such as the web and mobile applications. Government agencies and local authorities have placed strict regulations regarding the location and amount allowed for gambling. These efforts are made to prevent gambling addictions and monitor fraudulent activities. The revenue earned from gambling provides a considerable amount of tax revenue. The inception of internet gambling have allowed professional gamblers to par take in unlawful acts. However, the lack of studies on the technical inspections and systems to prohibit unlawful internet gambling has caused incidents such as the Walkerhill Hotel incident in 2016, where fraudsters placed bets abnormally by modifying an Internet of Things (IoT)-based application called "MyCard". This paper investigates the logic used by smartphone IoT applications to validate the location of users and then confirm continuous threats. Hence, our research analyzed transactions made on applications that operated using location authentication through IoT devices. Drawing on gambling transaction data from the Korea Racing Authority, this research used time series machine learning algorithms to identify anomalous activities and transactions. In our research, we propose a method to detect and prevent these anomalies by conducting a comparative analysis of the results of existing anomaly detection techniques and novel techniques.
在过去的十年中,技术的进步使得全球的赌博行业能够部署各种平台,如网络和移动应用程序。政府机构和地方当局对赌博的地点和允许的金额都制定了严格的规定。这些努力旨在防止赌博成瘾和监控欺诈活动。赌博收入提供了相当数量的税收。互联网赌博的出现使得职业赌徒能够参与非法活动。然而,缺乏对禁止非法互联网赌博的技术检查和系统的研究,导致了像 2016 年的华克山庄事件这样的事件,欺诈者通过修改一个名为"MyCard"的基于物联网 (IoT) 的应用程序进行异常投注。本文研究了智能手机物联网应用程序用于验证用户位置并确认持续威胁的逻辑。因此,我们的研究分析了通过物联网设备进行位置认证的应用程序的交易数据。本研究利用韩国赛马管理局的赌博交易数据,使用时间序列机器学习算法识别异常活动和交易。在我们的研究中,我们通过对现有异常检测技术和新的技术的结果进行比较分析,提出了一种检测和预防这些异常的方法。