$ECUAS_n$: A family of metrics for principled evaluation of uncertainty-augmented systems
Quick Take
$ECUAS_n$ introduces a new metric family for evaluating uncertainty-augmented systems in decision-making.
Key Points
- Addresses limitations of current evaluation methods.
- Metrics balance prediction costs and uncertainty imperfections.
- Demonstrated effectiveness on various datasets.
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