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Evaluation Metrics as Averaged Outcomes of Fair Gambles

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arxiv 2401.14483 v4 pith:YSFC2RUE submitted 2024-01-25 cs.LG stat.ML

Evaluation Metrics as Averaged Outcomes of Fair Gambles

classification cs.LG stat.ML
keywords metricsevaluationfairgamblesabilityaveragedforecastsgambler
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the current practices of machine learning, the evaluation of forecasts has become a cornerstone of scientific progress. A multitude of evaluation metrics have been suggested and used to qualify "good" forecasts. What do those metrics share? How are they related? In this work, we use a protocol borrowed from game-theoretic probability to show that a large part of evaluation metrics can be viewed as averaged outcomes of fair gambles. Intuitively, a fair gambler is one which a forecaster would expect to fail. Hence, the gambler's ability to gain disproves the quality of the forecast. Standard evaluation metrics are then variants of choices of such fair gambles. In particular, this choice is structured along two dimensions, one of which separates calibration-type and regret-type metrics. In particular, this framework sheds light on the relationship of calibration and regret showing a theoretical equivalence in their ability to evaluate when being scaled appropriately, but the incomparability of obtained scores.

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Cited by 1 Pith paper

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    Introduces decision-alignment to evaluate uncertainty metrics against downstream decision utilities and proposes prior-weighted proper scoring rules that align better in benchmarks and case studies.