Influence functions (IF) have been seen as a technique for explaining mo...
Transformer-based language models (LMs) are known to capture factual
kno...
Increasingly larger datasets have become a standard ingredient to advanc...
Realizing when a model is right for a wrong reason is not trivial and
re...
When explaining AI behavior to humans, how is the communicated informati...
Feature attribution a.k.a. input salience methods which assign an import...
Neural text generation (data- or text-to-text) demonstrates remarkable
p...
There is a recent surge of interest in using attention as explanation of...
Gorman and Bedrick (2019) recently argued for using random splits rather...
Motivated by recent findings on the probabilistic modeling of acceptabil...
In this paper, we study recent neural generative models for text generat...
A popular approach to sentence compression is to formulate the task as a...