Remco Chang, M. Ghoniem, Robert Kosara, W. Ribarsky, Jing Yang, Evan A. Suma, Caroline Ziemkiewicz, D. Kern, A. Sudjianto
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引用次数: 134
Abstract
Large financial institutions such as Bank of America handle hundreds of thousands of wire transactions per day. Although most transactions are legitimate, these institutions have legal and financial obligations in discovering those that are suspicious. With the methods of fraudulent activities ever changing, searching on predefined patterns is often insufficient in detecting previously undiscovered methods. In this paper, we present a set of coordinated visualizations based on identifying specific keywords within the wire transactions. The different views used in our system depict relationships among keywords and accounts over time. Furthermore, we introduce a search-by-example technique which extracts accounts that show similar transaction patterns. In collaboration with the Anti-Money Laundering division at Bank of America, we demonstrate that using our tool, investigators are able to detect accounts and transactions that exhibit suspicious behaviors.
美国银行(Bank of America)等大型金融机构每天要处理数十万笔电汇交易。虽然大多数交易是合法的,但这些机构有法律和财务义务发现那些可疑的交易。随着欺诈活动的方法不断变化,对预定义模式的搜索通常不足以检测以前未发现的方法。在本文中,我们提出了一组基于识别在线事务中的特定关键字的协调可视化。我们系统中使用的不同视图描述了关键字和帐户之间随时间变化的关系。此外,我们还介绍了一种按例搜索技术,该技术可以提取显示类似交易模式的账户。通过与美国银行反洗钱部门的合作,我们证明了使用我们的工具,调查人员能够检测出可疑行为的账户和交易。