{"title":"网络担保贷款风险管理的可视化分析","authors":"Zhibin Niu, Dawei Cheng, Liqing Zhang, Jiawan Zhang","doi":"10.1109/PacificVis.2018.00028","DOIUrl":null,"url":null,"abstract":"Groups of enterprises can guarantee each other and form complex networks in order to try to obtain loans from banks. Monitoring the financial status of a network, and preventing or reducing systematic risk in case of a crisis, is an area of great concern for the regulatory commission and for the banks. We set the ultimate goal of developing a visual analytic approach and tool for risk dissolving and decision-making. We have consolidated four main analysis tasks conducted by financial experts: i) Multi-faceted Default Risk Visualization, whereby a hybrid representation is devised to predict the default risk and an interface developed to visualize key indicators; ii) Risk Guarantee Patterns Discovery. We follow the Shneiderman mantra guidance for designing interactive visualization applications, whereby an interactive risk guarantee community detection and a motif detection based risk guarantee pattern discovery approach are described; iii) Network Evolution and Retrospective, whereby animation is used to help users to understand the guarantee dynamic; iv) Risk Communication Analysis. The temporal diffusion path analysis can be useful for the government and banks to monitor the spread of the default status. It also provides insight for taking precautionary measures to prevent and dissolve systematic financial risk. We implement the system with case studies using real-world bank loan data. Two financial experts are consulted to endorse the developed tool. 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引用次数: 22
摘要
企业集团可以相互担保,形成复杂的网络,试图从银行获得贷款。监控网络的财务状况,防止或减少发生危机时的系统性风险,是监管委员会和银行非常关注的一个领域。我们的最终目标是开发一种可视化分析方法和工具,用于风险化解和决策。我们整合了金融专家进行的四项主要分析任务:1)多方面的违约风险可视化,即设计一种混合表示来预测违约风险,并开发一个界面来可视化关键指标;ii)风险保证模式发现。我们遵循Shneiderman咒语指导设计交互式可视化应用程序,其中描述了交互式风险保证社区检测和基于基序检测的风险保证模式发现方法;iii) Network Evolution and Retrospective,利用动画帮助用户了解保障动态;iv)风险沟通分析。时间扩散路径分析可以帮助政府和银行监控违约状态的扩散。为防范和化解系统性金融风险提供了借鉴。我们通过使用真实银行贷款数据的案例研究来实现该系统。咨询了两位金融专家,以批准开发的工具。据我们所知,这是第一个以系统的方式探索网络担保贷款风险的可视化分析工具。
Visual Analytics for Networked-Guarantee Loans Risk Management
Groups of enterprises can guarantee each other and form complex networks in order to try to obtain loans from banks. Monitoring the financial status of a network, and preventing or reducing systematic risk in case of a crisis, is an area of great concern for the regulatory commission and for the banks. We set the ultimate goal of developing a visual analytic approach and tool for risk dissolving and decision-making. We have consolidated four main analysis tasks conducted by financial experts: i) Multi-faceted Default Risk Visualization, whereby a hybrid representation is devised to predict the default risk and an interface developed to visualize key indicators; ii) Risk Guarantee Patterns Discovery. We follow the Shneiderman mantra guidance for designing interactive visualization applications, whereby an interactive risk guarantee community detection and a motif detection based risk guarantee pattern discovery approach are described; iii) Network Evolution and Retrospective, whereby animation is used to help users to understand the guarantee dynamic; iv) Risk Communication Analysis. The temporal diffusion path analysis can be useful for the government and banks to monitor the spread of the default status. It also provides insight for taking precautionary measures to prevent and dissolve systematic financial risk. We implement the system with case studies using real-world bank loan data. Two financial experts are consulted to endorse the developed tool. To the best of our knowledge, this is the first visual analytics tool developed to explore networked-guarantee loan risks in a systematic manner.