Insights into Data through Model Behaviour: An Explainability-driven Strategy for Data Auditing for Responsible Computer Vision Applications
In this study, we take a departure and explore an explainability-driven strategy to data auditing, where actionable insights into the data at hand are discovered through the eyes of quantitative explainability on the behaviour of a dummy model prototype when exposed to data. We demonstrate this stra...
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Zusammenfassung: | In this study, we take a departure and explore an explainability-driven
strategy to data auditing, where actionable insights into the data at hand are
discovered through the eyes of quantitative explainability on the behaviour of
a dummy model prototype when exposed to data. We demonstrate this strategy by
auditing two popular medical benchmark datasets, and discover hidden data
quality issues that lead deep learning models to make predictions for the wrong
reasons. The actionable insights gained from this explainability driven data
auditing strategy is then leveraged to address the discovered issues to enable
the creation of high-performing deep learning models with appropriate
prediction behaviour. The hope is that such an explainability-driven strategy
can be complimentary to data-driven strategies to facilitate for more
responsible development of machine learning algorithms for computer vision
applications. |
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DOI: | 10.48550/arxiv.2106.09177 |