Broader disclosive transparency−truth and clarity in communication regarding the function of AI systems−is widely considered desirable. Unfortunately, it is a nebulous concept, difficult to both define and quantify. This is problematic, as previous work has demonstrated possible trade-offs and negative consequences to disclosive transparency, such as a confusion effect, where "too much information" clouds a reader's understanding of what a system description means. Disclosive transparency's subjective nature has rendered deep study into these problems and their remedies difficult. To improve this state of affairs, We introduce neural language model-based probabilistic metrics to directly model disclosive transparency, and demonstrate that they correlate with user and expert opinions of system transparency, making them a valid objective proxy. Finally, we demonstrate the use of these metrics in a pilot study quantifying the relationships between transparency, confusion, and user perceptions in a corpus of real NLP system descriptions.
@article{arxiv.2101.00433,
title = {Modeling Disclosive Transparency in NLP Application Descriptions},
author = {Michael Saxon and Sharon Levy and Xinyi Wang and Alon Albalak and William Yang Wang},
journal= {arXiv preprint arXiv:2101.00433},
year = {2022}
}
Comments
To appear at EMNLP 2021. 15 pages, 10 figures, 7 tables