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Autori principali: Kang, Kabir, Mussmann, Stephen
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.03135
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author Kang, Kabir
Mussmann, Stephen
author_facet Kang, Kabir
Mussmann, Stephen
contents Standard classification treats all errors equally, but in content moderation, medical screening, and safety-critical applications, mistakes on clear-cut cases are far more costly than errors on ambiguous ones. We propose normalized excess cost (NEC), a metric that weights classification errors by per-example costs and reduces to standard error rate when costs are uniform. Costs can derive from annotator vote margins, distance from decision thresholds, or confidence ratings. Across text, image, and tabular benchmarks, we find that NEC is often substantially lower than error rate -- models with 5\% error rate can achieve 1.8\% NEC -- revealing that most mistakes concentrate on ambiguous, low-cost examples. However, incorporating costs into training via loss weighting, sampling strategies, or regression yields inconsistent benefits: improvements appear only when costs are predictable from input features, as in our synthetic control, while real-world datasets show mixed or negligible gains. Our framework provides a practical methodology for deriving and evaluating instance-level misclassification costs, even when cost-sensitive training offers limited benefit.
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id arxiv_https___arxiv_org_abs_2605_03135
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Instance-Level Costs for Nuanced Classifier Evaluation
Kang, Kabir
Mussmann, Stephen
Machine Learning
Standard classification treats all errors equally, but in content moderation, medical screening, and safety-critical applications, mistakes on clear-cut cases are far more costly than errors on ambiguous ones. We propose normalized excess cost (NEC), a metric that weights classification errors by per-example costs and reduces to standard error rate when costs are uniform. Costs can derive from annotator vote margins, distance from decision thresholds, or confidence ratings. Across text, image, and tabular benchmarks, we find that NEC is often substantially lower than error rate -- models with 5\% error rate can achieve 1.8\% NEC -- revealing that most mistakes concentrate on ambiguous, low-cost examples. However, incorporating costs into training via loss weighting, sampling strategies, or regression yields inconsistent benefits: improvements appear only when costs are predictable from input features, as in our synthetic control, while real-world datasets show mixed or negligible gains. Our framework provides a practical methodology for deriving and evaluating instance-level misclassification costs, even when cost-sensitive training offers limited benefit.
title Instance-Level Costs for Nuanced Classifier Evaluation
topic Machine Learning
url https://arxiv.org/abs/2605.03135