XAutoML: A Visual Analytics Tool for Understanding and Validating
Automated Machine Learning
- URL: http://arxiv.org/abs/2202.11954v3
- Date: Fri, 24 Nov 2023 17:12:51 GMT
- Title: XAutoML: A Visual Analytics Tool for Understanding and Validating
Automated Machine Learning
- Authors: Marc-Andr\'e Z\"oller, Waldemar Titov, Thomas Schlegel, Marco F. Huber
- Abstract summary: XAutoML is an interactive visual analytics tool for explaining arbitrary AutoML optimization procedures and ML pipelines constructed by AutoML.
XAutoML combines interactive visualizations with established techniques from explainable artificial intelligence (XAI) to make the complete AutoML procedure transparent and explainable.
- Score: 5.633209323925663
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the last ten years, various automated machine learning (AutoM ) systems
have been proposed to build end-to-end machine learning (ML) pipelines with
minimal human interaction. Even though such automatically synthesized ML
pipelines are able to achieve a competitive performance, recent studies have
shown that users do not trust models constructed by AutoML due to missing
transparency of AutoML systems and missing explanations for the constructed ML
pipelines. In a requirements analysis study with 36 domain experts, data
scientists, and AutoML researchers from different professions with vastly
different expertise in ML, we collect detailed informational needs for AutoML.
We propose XAutoML, an interactive visual analytics tool for explaining
arbitrary AutoML optimization procedures and ML pipelines constructed by
AutoML. XAutoML combines interactive visualizations with established techniques
from explainable artificial intelligence (XAI) to make the complete AutoML
procedure transparent and explainable. By integrating XAutoML with JupyterLab,
experienced users can extend the visual analytics with ad-hoc visualizations
based on information extracted from XAutoML. We validate our approach in a user
study with the same diverse user group from the requirements analysis. All
participants were able to extract useful information from XAutoML, leading to a
significantly increased understanding of ML pipelines produced by AutoML and
the AutoML optimization itself.
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