When social networks meet payment: a security perspective

Nivedita Singh, M. A. Alawami, Hyoungshick Kim
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引用次数: 2

Abstract

In the big data arena, opportunities and challenges are mixed. The volume of data in the financial institution is proliferating, which imposes a challenge to big data analytics to ensure safety during each transaction. Moreover, as more and more social networking sites (SNS) are integrating an inbuilt online payment system into their domain, an exponential surge in financial scams is expected in the upcoming days. These scenarios are alarming, and with the rapid growth in the daily addition of new end users and their increasing time spent on SNS, the situations become more vulnerable. With the existing trend of data mobilizations and rapid increase in volume, variety, and velocity of data being produced, big data has a significant role in detecting fraud incidents in financial transactions. However, in the framework of present followed international standards, there is a voluntary compliance obligation on domestic governing bodies, which is a significant source for such voluminous financial frauds on SNS. In order to strengthen the enforcement of international standards to combat financial transactions on SNS, the paper proposes that domestic legislation should comply with international standards with the further addition of machine learning encircled by domestic banking legislation. Eventually, this could solve the security and privacy governance difficulties arising from these financial frauds over SNS. We believe that with our approach of three-layer security i.e. by international standards, domestic legislation, and machine learning, the finan-cial fraud arising due to the SNS payment system will be reduced to a larger extent.
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当社交网络遇到支付时:一个安全的视角
在大数据领域,机遇与挑战并存。金融机构的数据量正在激增,这对大数据分析提出了挑战,以确保每笔交易的安全。此外,随着越来越多的社交网站(SNS)将内置在线支付系统整合到自己的域名中,预计在未来的日子里,金融诈骗将呈指数级增长。这些情况令人担忧,随着每天新增终端用户的快速增长以及他们在SNS上花费的时间的增加,这种情况变得更加脆弱。随着数据动员的趋势和数据量、种类和速度的快速增长,大数据在检测金融交易中的欺诈事件方面发挥了重要作用。然而,在目前遵循的国际标准框架下,国内管理机构有自愿遵守的义务,这是社交媒体上大量金融欺诈的重要来源。为了加强执行国际标准以打击SNS上的金融交易,本文建议国内立法应符合国际标准,并在国内银行立法中进一步增加机器学习。最终,这可以解决这些社交网络金融欺诈所带来的安全和隐私治理难题。我们相信,通过我们的国际标准、国内立法和机器学习三层安全的方法,将在更大程度上减少由于SNS支付系统而产生的金融欺诈。
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