Credit assessments activities are essential for financial institutions and allow the global economy to grow. Building robust, solid and accurate models that estimate the probability of a default of a company is mandatory for credit insurance companies, moreover when it comes to bridging the trade finance gap. Automating the risk assessment process will allow credit risk experts to reduce their workload and focus on the critical and complex cases, as well as to improve the loan approval process by reducing the time to process the application. The recent developments in Artificial Intelligence are offering new powerful opportunities. However, most AI techniques are labelled as blackbox models due to their lack of explainability. For both users and regulators, in order to deploy such technologies at scale, being able to understand the model logic is a must to grant accurate and ethical decision making. In this study, we focus on companies credit scoring and we benchmark different machine learning models. The aim is to build a model to predict whether a company will experience financial problems in a given time horizon. We address the black box problem using eXplainable Artificial Techniques in particular, post-hoc explanations using SHapley Additive exPlanations. We bring light by providing an expert-aligned feature relevance score highlighting the disagreement between a credit risk expert and a model feature attribution explanation in order to better quantify the convergence towards a better human-aligned decision making.
翻译:信用评估活动对金融机构至关重要,并且使全球经济得以增长。 建立可靠、可靠和准确的模型,估计公司违约概率,对于信用保险公司来说是强制性的,而且对于缩小贸易融资差距而言,这种模型是强制性的。 风险评估程序自动化将使信用风险专家能够减少工作量,侧重于关键和复杂的案例,并通过缩短处理申请的时间来改进贷款审批程序。人工智能公司的最新发展正在提供新的有力机会。然而,大多数人工智能技术由于缺乏解释性而被称为黑盒模型。对于用户和监管者来说,为了在规模上部署这类技术,必须能够理解模型逻辑,才能作出准确和合乎道德的决策。在这项研究中,我们侧重于公司信用评分,并设定不同的机器学习模式。目的是建立一个模型,预测公司是否会在特定时间范围内遇到金融问题。我们用可移植的人工技术来解决黑盒问题,特别是后方技术解释,使用SHapley Additive解释。 对于用户和监管者来说,为了在规模上应用这类技术,必须能够理解模型逻辑,必须作出准确和合乎道德的判断。 在这项研究中,我们通过提供更精确的标准化的专家对比性分析,以便提出更精确地解释。 我们通过提供更精确的标准化的比重的比重的比重的比重的比重化的比重的比重的比重的比重的比重解释,来说明。