English

Shared Interest: Measuring Human-AI Alignment to Identify Recurring Patterns in Model Behavior

Machine Learning 2022-03-28 v2

Abstract

Saliency methods -- techniques to identify the importance of input features on a model's output -- are a common step in understanding neural network behavior. However, interpreting saliency requires tedious manual inspection to identify and aggregate patterns in model behavior, resulting in ad hoc or cherry-picked analysis. To address these concerns, we present Shared Interest: metrics for comparing model reasoning (via saliency) to human reasoning (via ground truth annotations). By providing quantitative descriptors, Shared Interest enables ranking, sorting, and aggregating inputs, thereby facilitating large-scale systematic analysis of model behavior. We use Shared Interest to identify eight recurring patterns in model behavior, such as cases where contextual features or a subset of ground truth features are most important to the model. Working with representative real-world users, we show how Shared Interest can be used to decide if a model is trustworthy, uncover issues missed in manual analyses, and enable interactive probing.

Keywords

Cite

@article{arxiv.2107.09234,
  title  = {Shared Interest: Measuring Human-AI Alignment to Identify Recurring Patterns in Model Behavior},
  author = {Angie Boggust and Benjamin Hoover and Arvind Satyanarayan and Hendrik Strobelt},
  journal= {arXiv preprint arXiv:2107.09234},
  year   = {2022}
}

Comments

17 pages, 10 figures. Published in CHI 2022. For more details, see http://shared-interest.csail.mit.edu

R2 v1 2026-06-24T04:20:49.506Z