AI systems have found a wide range of application areas in financial services. Their involvement in broader and increasingly critical decisions has escalated the need for compliance and effective model governance. Current governance practices have evolved from more traditional financial applications and modeling frameworks. They often struggle with the fundamental differences in AI characteristics such as uncertainty in the assumptions, and the lack of explicit programming. AI model governance frequently involves complex review flows and relies heavily on manual steps. As a result, it faces serious challenges in effectiveness, cost, complexity, and speed. Furthermore, the unprecedented rate of growth in the AI model complexity raises questions on the sustainability of the current practices. This paper focuses on the challenges of AI model governance in the financial services industry. As a part of the outlook, we present a system-level framework towards increased self-regulation for robustness and compliance. This approach aims to enable potential solution opportunities through increased automation and the integration of monitoring, management, and mitigation capabilities. The proposed framework also provides model governance and risk management improved capabilities to manage model risk during deployment.
翻译:AI系统在金融服务中发现了一系列广泛的应用领域,它们参与更广泛和越来越重要的决定,增加了遵守和有效示范治理的需要。目前的治理做法从较传统的金融应用和示范框架演变而来。它们往往与AI特性的根本差异,如假设的不确定性和缺乏明确的方案编制等,挣扎不休。AI模式治理经常涉及复杂的审查流程,严重依赖人工步骤。因此,AI模式在有效性、成本、复杂性和速度方面面临着严重的挑战。此外,AI模式的空前增长速度对当前做法的可持续性提出了疑问。本文件侧重于AI模式治理在金融服务行业的挑战。作为展望的一部分,我们提出了一个系统层面的框架,目的是通过提高自动化和综合监测、管理和缓解能力,使潜在的解决方案机会得以实现。拟议框架还提供模式治理和风险管理,提高在部署期间管理模型风险的能力。