Benchmarking Distribution Shift in Tabular Data with TableShift Josh Gardner Ludwig Schmidt, University of Washington
–Neural Information Processing Systems
Robustness to distribution shift has become a growing concern for text and image models as they transition from research subjects to deployment in the real world. However, high-quality benchmarks for distribution shift in tabular machine learning tasks are still lacking despite the widespread real-world use of tabular data and differences in the models used for tabular data in comparison to text and images. As a consequence, the robustness of tabular models to distribution shift is poorly understood.
Neural Information Processing Systems
Feb-12-2025, 02:04:25 GMT
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