Explainability is becoming an important requirement for organizations th...
This paper analyses the fundamental ingredients behind surrogate explana...
Local surrogate approaches for explaining machine learning model predict...
A multitude of classifiers can be trained on the same data to achieve si...
NLP Interpretability aims to increase trust in model predictions. This m...
Today, interpretability of Black-Box Natural Language Processing (NLP) m...
Security of machine learning models is a concern as they may face advers...
Post-hoc interpretability approaches have been proven to be powerful too...
Interpretable surrogates of black-box predictors trained on high-dimensi...
Machine learning models are increasingly used in the industry to make
de...
Local surrogate models, to approximate the local decision boundary of a
...
In the context of post-hoc interpretability, this paper addresses the ta...