基于贝叶斯和马尔可夫理论的社会经济因素的网络犯罪预测模型

Q. Kester, Emeh Jennifer Afoma
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引用次数: 1

摘要

如果金融机构不能有效地发现事件,它就不能成功地应对事件。这意味着事件的检测,是事件响应中最重要的方面。一个在离散状态和时间上具有一阶依赖的随机过程被描述为马尔可夫链,同样,贝叶斯理论是一个推理和使用概率进行推理的数学框架。这两种理论基于社会经济因素,可用于预测管理信息系统(MIS)中网络犯罪的发生。银行业技术的进步使银行业务流程变得非常便利,但随着技术的进步,不同性质的网络犯罪层出不穷,并同样达到高峰。尽管已经采取了许多不同的措施来打击这些罪行,但仍然存在许多在任何信息系统中都无法避免的漏洞。金融机构需要开发可用于打击网络犯罪活动的预测模型。本文运用马尔可夫链和贝叶斯推理对网络犯罪的性质及其发生的概率进行分析,并利用分析结果根据所考虑的因素分析网络犯罪发生的可能性。
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Crime Predictive Model in Cybercrime based on Social and Economic Factors Using the Bayesian and Markov Theories
If financial institutions cannot detect incidents effectively, it cannot succeed in responding to incidents. This implies that the detection of incidents, is the most important aspect of incident response. A stochastic process with a first order dependence in discrete state and time is described as Markov chain, in the same way, Bayesian theory is a mathematical framework for reasoning and performing inference using probability. These two theories when based on socioeconomic factors can be used to predict cybercrime occurrence in Management Information Systems (MIS). The advancement of technology in banking has made banking business processes very convenient, but as the technology advances, cybercrimes of different nature emerges and equally at its peak. In as much as there are different measures already in place to combat these crimes, there still lies so many vulnerabilities which cannot be evitable in any information systems. Financial institutions need to develop predictive models that can be used to combat this cybercrime activities.In this paper, the application of Markov chain and Bayesian inference was used to analyze the nature of cybercrime and the probability of its occurrence, and the results were used to analyze the possibility of occurrence of cybercrimes based on the factors considered.
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