Are Metrics Enough? Guidelines for Communicating and Visualizing Predictive Models to Subject Matter Experts
Ashley Suh, Gabriel Appleby, Erik W. Anderson, Luca Finelli, Remco, Chang, Dylan Cashman

TL;DR
This paper explores effective visualization guidelines for communicating predictive model performance to subject matter experts, aiming to improve understanding, trust, and decision-making beyond traditional metrics.
Contribution
It introduces a set of visualization-based communication guidelines developed through an iterative study with data scientists and subject matter experts.
Findings
Subject matter experts felt more comfortable discussing models.
Enhanced understanding of model trade-offs and risks.
Guidelines improved communication and decision-making.
Abstract
Presenting a predictive model's performance is a communication bottleneck that threatens collaborations between data scientists and subject matter experts. Accuracy and error metrics alone fail to tell the whole story of a model - its risks, strengths, and limitations - making it difficult for subject matter experts to feel confident in their decision to use a model. As a result, models may fail in unexpected ways or go entirely unused, as subject matter experts disregard poorly presented models in favor of familiar, yet arguably substandard methods. In this paper, we describe an iterative study conducted with both subject matter experts and data scientists to understand the gaps in communication between these two groups. We find that, while the two groups share common goals of understanding the data and predictions of the model, friction can stem from unfamiliar terms, metrics, and…
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Taxonomy
TopicsData Visualization and Analytics · Big Data and Business Intelligence · Scientific Computing and Data Management
MethodsAttentive Walk-Aggregating Graph Neural Network
