Abstract

In this talk, I hope to reflect on some of the progress made in the field of interpretable machine learning. We will reflect on where we are going as a field, and what are the things we need to be aware and be careful as we make progress. With that perspective, I will then discuss some of my recent work 1) sanity checking popular methods and 2) developing more lay person-friendly interpretability method.

Video Recording