人工智能技术在信用卡欺诈检测中的应用:定量研究

Yusuf Yusuf Dayyabu, D. Arumugam, S. Balasingam
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引用次数: 1

摘要

由于大量的日常交易以及在识别欺诈交易方面遇到的困难,信用卡欺诈是一个给会计和金融行业从业人员带来挑战的主要问题。本研究的目的是研究人工智能技术作为欺诈检测机制的应用,该机制可以有效地检测信用卡欺诈并识别欺诈性金融交易。这些数据来自会计和金融行业的100名受访者,并使用SPSS进行分析。研究者对数据进行回归分析、Pearson相关系数分析和信度分析。研究结果表明,机器学习、数据挖掘和模糊逻辑这三种人工智能技术与信用卡欺诈检测有显著的正相关关系。然而,与机器学习和数据挖掘相比,模糊逻辑被发现是专家使用最少的,因为它的准确性/精度较低。基于这些发现,我们的研究得出结论,人工智能技术的应用为专家检测欺诈性交易提供了更好的准确性和效率。因此,建议欺诈审查人员、审计员、会计师、银行家和组织应该实施和应用人工智能技术,以便更快地发现异常情况,并有效地识别欺诈性金融交易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of artificial intelligence techniques in credit card fraud detection: a quantitative study
Credit card fraud is a major problem that has caused several challenges for practitioners in the accounting and finance industry due to a large number of daily transactions as well as the difficulties encountered in identifying fraudulent transactions. The purpose of this study is to investigate the application of artificial intelligence techniques as a fraud detection mechanism that can effectively and efficiently detect credit card fraud and identify fraudulent financial transactions. The data was acquired from 100 respondents across the accounting and finance industry and analysed using SPSS. Researcher analysed the data using regression analysis, Pearson correlation coefficient, and reliability analysis. Findings revealed that the three artificial intelligence techniques machine learning, data mining, and fuzzy logic have a significant positive relationship with credit card fraud detection. However, fuzzy logic was discovered to be the least utilized by experts due to its low accuracy/precision in comparison with machine learning and data mining. Based on these findings, our study concludes that the application of artificial intelligence techniques provides experts with better accuracy and efficiency in detecting fraudulent transactions. Therefore, it is recommended that fraud examiners, auditors, accountants, bankers, and organizations should implement and apply artificial intelligence techniques in order to spot anomalies faster and identify fraudulent financial transactions effectively and efficiently.
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来源期刊
E3S Web of Conferences
E3S Web of Conferences Energy-Energy (all)
CiteScore
0.90
自引率
0.00%
发文量
1133
期刊介绍: E3S Web of Conferences is an Open Access publication series dedicated to archiving conference proceedings in all areas related to Environment, Energy and Earth Sciences. The journal covers the technological and scientific aspects as well as social and economic matters. Major disciplines include: soil sciences, hydrology, oceanography, climatology, geology, geography, energy engineering (production, distribution and storage), renewable energy, sustainable development, natural resources management… E3S Web of Conferences offers a wide range of services from the organization of the submission of conference proceedings to the worldwide dissemination of the conference papers. It provides an efficient archiving solution, ensuring maximum exposure and wide indexing of scientific conference proceedings. Proceedings are published under the scientific responsibility of the conference editors.
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