Performative Prediction made practical
Javier Sanguino Bautiste · Thomas Kehrenberg · Carlos Rosety · Jose A. Lozano · Novi Quadrianto
Abstract
Performative Prediction studies settings where deploying a model induces a distribution shift in the data with the aim of building robust and good-peforming models under these post-deployment effects. Most existing work in this area is theoretical and relies on strict assumptions to converge to those models, which makes the resulting techniques difficult to apply in practice and limits their accessibility to the broader Machine Learning (ML) community. In this blog post, we use visualization techniques 1) to provide an intuitive explanation of Performative Prediction and 2) to extract practical insights for studying convergence when theoretical assumptions do not hold.
Successful Page Load