文献综述:数字商业财务系统的异常检测方法

Sarah Oliveira Pinto, Vinicius Amorim Sobreiro
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引用次数: 4

摘要

异常检测方法对于增强决策系统至关重要,特别是在组织经济绩效和消费者成本的风险降低过程中。以前对异常检测的研究主要是检查转化为欺诈的异常,例如欺诈性信用卡交易或保险系统中的欺诈。然而,异常表示系统模式数据的不规则性,可能由偏差、掺假或不一致引起。此外,它的研究不仅包括欺诈,还包括任何预示风险的行为异常。本文提出的方法和技术的文献综述,以检测不同的金融系统使用五步技术异常。在我们提出的方法中,除了确定研究机会外,我们还使用代码创建了一个分类框架,将该主题的主要技术和知识系统化。此外,统计结果还显示了一些研究空白,其中三个主要的空白需要探索:一个共同的数据库,不同维度大小的数据的测试和检测模型有效性的指标。因此,所提出的框架与理解现有的科学知识库有关,并表明了考虑金融系统异常主题的研究议程的重要差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Literature review: Anomaly detection approaches on digital business financial systems

Anomaly detection approaches have become critically important to enhance decision-making systems, especially regarding the process of risk reduction in the economic performance of an organisation and the consumer costs. Previous studies on anomaly detection have examined mainly abnormalities that translate into fraud, such as fraudulent credit card transactions or fraud in insurance systems. However, anomalies represent irregularities in system patterns data, which may arise from deviations, adulterations or inconsistencies. Further, its study encompasses not only fraud, but also any behavioural abnormalities that signal risks. This paper proposes a literature review of methods and techniques to detect anomalies on diverse financial systems using a five-step technique. In our proposed method, we created a classification framework using codes to systematize the main techniques and knowledge on the subject, in addition to identifying research opportunities. Furthermore, the statistical results show several research gaps, among which three main ones should be explored for developing this area: a common database, tests with different dimensional sizes of data and indicators of the detection models' effectiveness. Therefore, the proposed framework is pertinent to comprehending an existing scientific knowledge base and signals important gaps for a research agenda considering the topic of anomalies in financial systems.

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