大数据视角下影响欺诈交易的因素

F. Levon, Nijolė Maknickienė
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引用次数: 0

摘要

本文主要关注欺诈行为和模式,以及使用大数据检测此类模式的方法。该研究分析了科学文章,以检验金融欺诈的类型及其检测技术,并基于美国各地欺诈性信用卡交易的特征因素开发了一个模型。运用了回归分析、相关分析和描述性统计分析。统计上显著的结果表明,欺诈性交易与10月份和周四在阿拉斯加进行的交易之间存在因果关系。虽然,这些关系的影响相对较小。建议在未来的研究中使用更多可用于识别欺诈性交易的数值变量来扩展数据集,以更好地适应模型的整体拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FACTORS INFLUENCING FRAUDULENT TRANSACTIONS FROM BIG DATA PERSPECTIVE
This article focuses on fraudulent behaviour and patterns as well as ways of detecting such patterns by using Big Data. The study analyses scientific articles to examine types of financial fraud and their detection techniques as well as develops a model that is based on factors characterizing fraudulent credit card transactions made across USA. Regression analysis, correlation and descriptive statistics analysis is applied. Statistically significant results are found indicating a causal relationship between fraudulent transactions and transactions made in Alaska, during the month of October and on a Thursday. Although, the impact of these relationships is relatively small. Expanding the dataset with more numerical variables that could be used for identifying fraudulent transactions is advised for future research as to better the overall fit of the model.
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