Redirecting to original paper in 30 seconds...

Click below to go immediately or wait for automatic redirect

arxiv_ml 95% Match Position Paper AI Policy Makers,AI Regulators,Machine Learning Researchers,Legal Experts in AI,Compliance Officers 20 hours ago

Position: Bridge the Gaps between Machine Unlearning and AI Regulation

ai-safety › privacy
📄 Abstract

Abstract: The ''right to be forgotten'' and the data privacy laws that encode it have motivated machine unlearning since its earliest days. Now, some argue that an inbound wave of artificial intelligence regulations -- like the European Union's Artificial Intelligence Act (AIA) -- may offer important new use cases for machine unlearning. However, this position paper argues, this opportunity will only be realized if researchers proactively bridge the (sometimes sizable) gaps between machine unlearning's state of the art and its potential applications to AI regulation. To demonstrate this point, we use the AIA as our primary case study. Specifically, we deliver a ``state of the union'' as regards machine unlearning's current potential (or, in many cases, lack thereof) for aiding compliance with various provisions of the AIA. This starts with a precise cataloging of the potential applications of machine unlearning to AIA compliance. For each, we flag the technical gaps that exist between the potential application and the state of the art of machine unlearning. Finally, we end with a call to action: for machine learning researchers to solve the open technical questions that could unlock machine unlearning's potential to assist compliance with the AIA -- and other AI regulations like it.

Key Contributions

This position paper argues that while AI regulations like the EU's AIA present new use cases for machine unlearning, significant technical gaps exist. It analyzes the current state of machine unlearning and its potential (or lack thereof) for aiding AIA compliance, cataloging applications and flagging technical challenges to bridge the gap between research and regulatory needs.

Business Value

Helps organizations understand the current limitations and future potential of machine unlearning in meeting evolving AI regulatory requirements, guiding investment and research efforts towards compliance solutions.