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Software Patterns to Identify Credit Risk Patterns

机译:用于识别信用风险模式的软件模式

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The adoption of Machine Learning (ML) in software applications has increased in domains like healthcare, banking and others. leading to coining of the term MLWare applications. However, challenges like diverse code base, complex components, lack of expertise, etc. persist in development and maintenance of these applications. Application of software engineering patterns and practices for the development of MLWare applications can improve maintainability, extensibility, scalability and other software quality parameters. In this paper, we propose an approach for developing MLWare applications using a pattern oriented approach. We demonstrate the approach on a credit risk scorecard application that can helps loan officer identify risk patterns and make loan decisions.
机译:软件应用中的机器学习(ML)在医疗保健,银行和其他人等域中增加了。导致术语MLWare应用程序进行重新加入。但是,挑战,如不同的代码基础,复杂的组件,缺乏专业知识等持续存在于这些应用程序的开发和维护。软件工程模式的应用和实施MLWare应用程序的开发可以提高可维护性,可扩展性,可伸缩性和其他软件质量参数。在本文中,我们提出了一种使用模式面向方法开发MLWare应用程序的方法。我们展示了信用风险记分卡申请的方法,可以帮助贷款官员识别风险模式并进行贷款决策。

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