"I know it when I see it". Visualization and Intuitive Interpretability
Abstract
Most research on the interpretability of machine learning systems focuses on the development of a more rigorous notion of interpretability. I suggest that a better understanding of the deficiencies of the intuitive notion of interpretability is needed as well. I show that visualization enables but also impedes intuitive interpretability, as it presupposes two levels of technical pre-interpretation: dimensionality reduction and regularization. Furthermore, I argue that the use of positive concepts to emulate the distributed semantic structure of machine learning models introduces a significant human bias into the model. As a consequence, I suggest that, if intuitive interpretability is needed, singular representations of internal model states should be avoided.
Cite
@article{arxiv.1711.08042,
title = {"I know it when I see it". Visualization and Intuitive Interpretability},
author = {Fabian Offert},
journal= {arXiv preprint arXiv:1711.08042},
year = {2017}
}
Comments
Presented at NIPS 2017 Symposium on Interpretable Machine Learning