人工智能如何帮助客户智能进行信贷组合管理?系统性文献综述

Alessandra Amato , Joerg R. Osterrieder , Marcos R. Machado
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引用次数: 0

摘要

在这个大数据时代,随着先进分析技术的发展,金融业有能力在其系统中实施创新技术,以获取有关客户的重要信息,并警惕地监控他们的活动。在这种情况下,出现并兴起了两种重要的应用,即客户细分系统和预警系统。因此,本研究对客户细分自动化和预警技术进行了系统的文献综述,重点关注信贷组合实体的管理。研究从三个不同的角度对大量学术文章进行了深入探讨:描绘文献中的主要趋势,解读首要主题,以及批判性地检查客户聚类应用中预警信号的整合。此外,综述还发现,对这两个系统的协同应用进行探讨的研究明显不足。尽管这两个系统分别在风险管理和有针对性的营销战略中发挥着独立作用,但综合方法在增强金融稳定性和量身定制客户服务方面具有潜力。因此,这篇综述是一项重要的学术贡献,倡导在金融业中综合应用这些系统。研究结果为今后的研究和实际应用提供了新的基础,有可能重新定义金融业的战略。
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How can artificial intelligence help customer intelligence for credit portfolio management? A systematic literature review

In this era of Big Data and the advancement of sophisticated analytical techniques, the financial industry has the capacity to implement innovative technologies within their systems to derive crucial insights about their clientele and vigilantly monitor their activities. This landscape has seen the emergence and rise of two significant applications, namely, customer segmentation systems and early warning systems. Therefore, this study presents a systematic literature review on the automation of customer segmentation and early warning techniques with a focus on managing credit portfolio entities. The research delves into a multitude of scholarly articles from three distinct perspectives: charting the dominant trends within the literature, unpacking the overarching themes, and critically examining the integration of early warning signals within customer clustering applications. Furthermore, the review reveals a noticeable dearth of studies probing the synergistic application of these two systems. Despite their independent effectiveness in risk management and targeted marketing strategies respectively, an integrated approach holds potential for bolstering financial stability and tailoring customer service. Thus, this review stands as a significant academic contribution, advocating an integrated application of these systems within the financial industry. The findings provide a novel foundation for future research and practical applications, potentially redefining strategies within the financial sector.

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