ESCAPE: Countering Systematic Errors from Machine's Blind Spots via Interactive Visual Analysis
March 16, 2023 ยท Declared Dead ยท ๐ International Conference on Human Factors in Computing Systems
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Authors
Yongsu Ahn, Yu-Ru Lin, Panpan Xu, Zeng Dai
arXiv ID
2303.09657
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.HC
Citations
13
Venue
International Conference on Human Factors in Computing Systems
Last Checked
4 months ago
Abstract
Classification models learn to generalize the associations between data samples and their target classes. However, researchers have increasingly observed that machine learning practice easily leads to systematic errors in AI applications, a phenomenon referred to as AI blindspots. Such blindspots arise when a model is trained with training samples (e.g., cat/dog classification) where important patterns (e.g., black cats) are missing or periphery/undesirable patterns (e.g., dogs with grass background) are misleading towards a certain class. Even more sophisticated techniques cannot guarantee to capture, reason about, and prevent the spurious associations. In this work, we propose ESCAPE, a visual analytic system that promotes a human-in-the-loop workflow for countering systematic errors. By allowing human users to easily inspect spurious associations, the system facilitates users to spontaneously recognize concepts associated misclassifications and evaluate mitigation strategies that can reduce biased associations. We also propose two statistical approaches, relative concept association to better quantify the associations between a concept and instances, and debias method to mitigate spurious associations. We demonstrate the utility of our proposed ESCAPE system and statistical measures through extensive evaluation including quantitative experiments, usage scenarios, expert interviews, and controlled user experiments.
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