Towards Robust Interpretability with Self-Explaining Neural Networks
Abstract
Most recent work on interpretability of complex machine learning models has focused on estimating a-posteriori explanations for previously trained models around specific predictions. Self-explaining models where interpretability plays a key role already during learning have received much less attention. We propose three desiderata for explanations in general -- explicitness, faithfulness, and stability -- and show that existing methods do not satisfy them. In response, we design self-explaining models in stages, progressively generalizing linear classifiers to complex yet architecturally explicit models. Faithfulness and stability are enforced via regularization specifically tailored to such models. Experimental results across various benchmark datasets show that our framework offers a promising direction for reconciling model complexity and interpretability.
Cite
Text
Melis and Jaakkola. "Towards Robust Interpretability with Self-Explaining Neural Networks." Neural Information Processing Systems, 2018.Markdown
[Melis and Jaakkola. "Towards Robust Interpretability with Self-Explaining Neural Networks." Neural Information Processing Systems, 2018.](https://mlanthology.org/neurips/2018/melis2018neurips-robust/)BibTeX
@inproceedings{melis2018neurips-robust,
title = {{Towards Robust Interpretability with Self-Explaining Neural Networks}},
author = {Melis, David Alvarez and Jaakkola, Tommi},
booktitle = {Neural Information Processing Systems},
year = {2018},
pages = {7775-7784},
url = {https://mlanthology.org/neurips/2018/melis2018neurips-robust/}
}