Show or suppress? Managing input uncertainty in machine learning model explanations

作者:

摘要

Feature attribution is widely used in interpretable machine learning to explain how influential each measured input feature value is for an output inference. However, measurements can be uncertain, and it is unclear how the awareness of input uncertainty can affect the trust in explanations. We propose and study two approaches to help users to manage their perception of uncertainty in a model explanation: 1) transparently show uncertainty in feature attributions to allow users to reflect on, and 2) suppress attribution to features with uncertain measurements and shift attribution to other features by regularizing with an uncertainty penalty. Through simulation experiments, qualitative interviews, and quantitative user evaluations, we identified the benefits of moderately suppressing attribution uncertainty, and concerns regarding showing attribution uncertainty. This work adds to the understanding of handling and communicating uncertainty for model interpretability.

论文关键词:Trust,Uncertainty,Interpretable machine learning

论文评审过程:Received 14 April 2020, Revised 6 January 2021, Accepted 21 January 2021, Available online 27 January 2021, Version of Record 2 February 2021.

论文官网地址:https://doi.org/10.1016/j.artint.2021.103456