基于最大熵原理的火花法银行客户账户验证

IF 2 Q3 TELECOMMUNICATIONS Journal of Computer Networks and Communications Pub Date : 2023-12-31 DOI:10.1155/2023/8840168
Xiaorong Qiu, Ye Xu, Yingzhong Shi, S. K. Deepa, S. Balakumar
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引用次数: 0

摘要

银行客户验证的目的是为银行和金融机构的用户提供一系列服务。由于银行数据量大,有必要对用户账户进行各种分析方法。本研究致力于从真实银行数据中发现洗钱行为。银行数据分析是一个复杂的过程,涉及从各种来源收集的信息,主要是人格方面的信息,如票据或银行账户交易,这些信息具有定性特征,如目击者的证词。由于这些信息的庞大性,如果有专有技术和工具的支持,业务或研究活动可以得到极大的改善。本研究考虑了数据挖掘操作的应用,目的是以智能方法发现银行数据的新知识。本研究的方法是使用带有一组火花的尖峰神经网络(SNN)来检测洗钱活动,但由于在准确识别洗钱活动特征方面存在弱点,因此还使用了最大熵原理(MEP)方法。这种方法将有一个从聚类、特征提取到分类的映射,以实现准确检测。根据分析和模拟,可以观察到所提出的 SNN-MFP 方法的准确率为 87%,比只使用 SNN 的经典方法的功能高出 84.71%。在这次分析中,观察到伊朗 Mellat 银行的真实银行数据,在其第三和第四个数据中,经过综合分析并得出不同的输出结果,出现了两个洗钱案件。
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Maximum Entropy Principle Based on Bank Customer Account Validation Using the Spark Method
Bank customer validation is carried out with the aim of providing a series of services to users of a bank and financial institutions. It is necessary to perform various analytical methods for user’s accounts due to the high volume of banking data. This research works in the field of money laundering detection from real bank data. Banking data analysis is a complex process that involves information gathered from various sources, mainly in terms of personality, such as bills or bank account transactions which have qualitative characteristics such as the testimony of eyewitnesses. Operational or research activities can be greatly improved if supported by proprietary techniques and tools, due to the vast nature of this information. The application of data mining operations with the aim of discovering new knowledge of banking data with an intelligent approach is considered in this research. The approach of this research is to use the spiking neural network (SNN) with a group of sparks to detect money laundering, but due to the weakness in accurately identifying the characteristics of money laundering, the maximum entropy principle (MEP) method is also used. This approach will have a mapping from clustering and feature extraction to classification for accurate detection. Based on the analysis and simulation, it is observed that the proposed approach SNN-MFP has 87% accuracy and is 84.71% more functional than the classical method of using only the SNN. In this analysis, it is observed that in real banking data from Mellat Bank, Iran, in its third and fourth data, with a comprehensive analysis and reaching different outputs, there have been two money laundering cases.
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来源期刊
CiteScore
5.30
自引率
5.00%
发文量
18
审稿时长
15 weeks
期刊介绍: The Journal of Computer Networks and Communications publishes articles, both theoretical and practical, investigating computer networks and communications. Articles explore the architectures, protocols, and applications for networks across the full spectrum of sizes (LAN, PAN, MAN, WAN…) and uses (SAN, EPN, VPN…). Investigations related to topical areas of research are especially encouraged, including mobile and wireless networks, cloud and fog computing, the Internet of Things, and next generation technologies. Submission of original research, and focused review articles, is welcomed from both academic and commercial communities.
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