Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

LOCUS: A Distribution-Free Loss-Quantile Score for Risk-Aware Predictions

About

Modern machine learning models can be accurate on average yet still make mistakes that dominate deployment cost. We introduce Locus, a distribution-free wrapper that produces a per-input loss-scale reliability score for a fixed prediction function. Rather than quantifying uncertainty about the label, Locus models the realized loss of the prediction function using any engine that outputs a predictive distribution for the loss given an input. A simple split-calibration step turns this function into a distribution-free interpretable score that is comparable across inputs and can be read as an upper loss level. The score is useful on its own for ranking, and it can optionally be thresholded to obtain a transparent flagging rule with distribution-free control of large-loss events. Experiments across 13 regression benchmarks show that Locus yields effective risk ranking and reduces large-loss frequency compared to standard heuristics.

Matheus Barreto, M\'ario de Castro, Thiago R. Ramos, Denis Valle, Rafael Izbicki• 2026

Related benchmarks

TaskDatasetResultRank
Selective Regressioncycle (test)
Conditional Large-Loss Rate26.7
12
Selective Regressionhomes (test)
Conditional Large-Loss Rate18.8
12
Selective RegressionSTAR (test)
Conditional Large-Loss Rate28.5
12
Selective Regressionwec (test)
Conditional Large-Loss Rate8.2
12
Selective Regressionwinewhite (test)
Conditional Large-Loss Rate26.5
12
Regressionmeps 19 (test)
Max Cond. Coverage Deviation14
10
Regressionconcrete (test)
Conditional Large-Loss Rate25.3
6
Regressionelectric (test)
Conditional Large-Loss Rate24
6
RegressionSuperconductivity (test)
Conditional Large-Loss Rate18
6
Regressionwinered (test)
Conditional Large-Loss Rate26.4
6
Showing 10 of 18 rows

Other info

Follow for update