What Does Machine Learning Have to Offer Mathematics?
The interaction of machine learning with math has attracted a lot of attention, because mathematics is in some respects a closed world with well-defined rules (like chess, and unlike poetry-writing) but also a domain where success is ultimately judged by human assessments of ingenuity and importance, not rigid criteria (like poetry-writing, and unlike chess). Can machines prove theorems? Can they have mathematical ideas? In this talk from our Theoretically Speaking public lecture series, Jordan Ellenberg (University of Wisconsin–Madison) spoke about his joint work with researchers from DeepMind (which used novel techniques in machine learning to make progress in a problem in combinatorics) and charted some near-term ways that machine learning may affect mathematical practice.