为客户价值和生存能力做出决策的人工智能

Elmin Marevac, Selman Patković, E. Žunić
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引用次数: 0

摘要

预测建模和人工智能已经成为许多现代行业中无处不在的一部分,并为更准确的分析、更好的决策、降低风险和提高盈利能力提供了有希望的机会。这些技术最有前途的应用之一是在金融部门,因为这些技术可能对欺诈检测、信用风险、信誉和支付分析产生影响。通过使用机器学习算法来分析大型数据集,金融机构可以识别可能表明欺诈活动的模式和异常,从而使他们能够实时采取行动并最大限度地减少损失。本文旨在探讨预测模型在评估客户价值方面的应用,确定这种方法所涉及的好处和风险,并比较它们的结果,以便深入了解哪种模型在给定的上下文中表现最佳。
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Decision-making AI for customer worthiness and viability
Predictive modelling and AI have become a ubiquitous part of many modern industries and provide promising opportunities for more accurate analysis, better decision-making, reducing risk and improving profitability. One of the most promising applications for these technologies is in the financial sector as these could be influential for fraud detection, credit risk, creditworthiness and payment analysis. By using machine learning algorithms for analysing larger datasets, financial institutions could identify patterns and anomalies that could indicate fraudulent activity, allowing them to take action in real-time and minimize losses. This paper aims to explore the application of predictive models for assessing customer worthiness, identify the benefits and risks involved with this approach and compare their results in order to provide insights into which model performs best in the given context.
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