Towards risk-aware artificial intelligence and machine learning systems: An overview
作者:
Highlights:
• Provide a consolidated review on heterogeneous sources of risks in AI/ML systems.
• Identify the research efforts needed for a risk management framework dedicated to AI/ML systems.
• Outline the research opportutines and challenges along the development of risk-aware AI/ML systems.
摘要
The adoption of artificial intelligence (AI) and machine learning (ML) in risk-sensitive environments is still in its infancy because it lacks a systematic framework for reasoning about risk, uncertainty, and their potentially catastrophic consequences. In high-impact applications, inference on risk and uncertainty will become decisive in the adoption of AI/ML systems. To this end, there is a pressing need for a consolidated understanding on the varied risks arising from AI/ML systems, and how these risks and their side effects emerge and unfold in practice. In this paper, we provide a systematic and comprehensive overview of a broad array of inherent risks that can arise in AI/ML systems. These risks are grouped into two categories: data-level risk (e.g., data bias, dataset shift, out-of-domain data, and adversarial attacks) and model-level risk (e.g., model bias, misspecification, and uncertainty). In addition, we highlight the research needs for developing a holistic framework for risk management dedicated to AI/ML systems to hedge the corresponding risks. Furthermore, we outline several research related challenges and opportunities along with the development of risk-aware AI/ML systems. Our research has the potential to significantly increase the credibility of deploying AI/ML models in high-stakes decision settings for facilitating safety assurance, and preventing systems from unintended consequences.
论文关键词:Risk analysis,Artificial intelligence and machine learning,Risk management,Safety assurance,Uncertainty
论文评审过程:Received 10 October 2021, Revised 4 April 2022, Accepted 25 April 2022, Available online 2 May 2022, Version of Record 10 June 2022.
论文官网地址:https://doi.org/10.1016/j.dss.2022.113800