Abstract
Model comparison is an important process to facilitate model diagnosis, improvement, and selection when multiple models are developed for a classification task. It involves careful comparison concerning model performance and interpretation. Current visual analytics solutions often ignore the feature selection process. They either do not support detailed analysis of multiple multi-class classifiers or rely on feature analysis alone to interpret model results. Understanding how different models make classification decisions, especially classification disagreements of the same instances, requires a deeper model understanding. We present ModelWise, a visual analytics method to compare multiple multi-class classifiers in terms of model performance, feature space, and model explanation. ModelWise adapts visualizations with rich interactions to support multiple workflows to achieve model diagnosis, improvement, and selection. It considers feature subspaces generated for use in different models and improves model understanding by model explanation. We demonstrate the usability of ModelWise with two case studies, one with a small exemplar dataset and another developed with a machine learning expert with real-world perioperative data.
Original language | English |
---|---|
Pages (from-to) | 97-108 |
Number of pages | 12 |
Journal | Computer Graphics Forum |
Volume | 41 |
Issue number | 3 |
DOIs | |
Publication status | Published - 1 Jun 2022 |
Funding
We thank Simona Turco and Tom Bakkes (Dept. of Electrical Engineering, TU/e) for insightful discussions and help with case studies.
Keywords
- CCS Concepts
- Visual analytics
- • Computing methodologies → Supervised learning by classification
- • Human-centered computing → Visualization