Poster
in
Workshop: AI for Science: Mind the Gaps
Scientific Argument with Supervised Learning
Jeffrey Lockhart · Abigail Jacobs
Abstract:
The use of machine learning (ML) for scientific discovery has enabled data-driven approaches to new and old questions alike. We argue that scientific arguments based on algorithms for discovery hold the potential to reinforce existing assumptions about phenomena, under the guise of testing them. Using examples from image-based biological classification, we show how scientific arguments using supervised learning can contribute to unintended, unrealistic, or under-evidenced claims.