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Conformal Prediction in Hierarchical Classification with Constrained Representation Complexity

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Conformal prediction has emerged as a widely used framework for constructing valid prediction sets in classification and regression tasks. In this work, we extend the split conformal prediction framework to hierarchical classification, where prediction sets are commonly restricted to internal nodes of a predefined hierarchy, and propose two computationally efficient inference algorithms. The first algorithm returns internal nodes as prediction sets, while the second one relaxes this restriction. Using the notion of representation complexity, the latter yields smaller set sizes at the cost of a more general and combinatorial inference problem. Empirical evaluations on several benchmark datasets demonstrate the effectiveness of the proposed algorithms in achieving nominal coverage.

Thomas Mortier, Alireza Javanmardi, Yusuf Sale, Eyke H\"ullermeier, Willem Waegeman• 2025

Related benchmarks

TaskDatasetResultRank
Error AttributionGSM8k Left Dense
Removal Rate80
30
Error AttributionMATH
Removal Rate32
30
Error AttributionGSM8k Right Dense
Removal Rate29
30
Error AttributionGSM8k Mid Dense
Removal Rate38
30
Error AttributionWho&When--
30
Hierarchical classificationCIFAR-10
Coverage100
7
Hierarchical classificationCaltech-256
Coverage (COV.)100
7
Hierarchical classificationPlantCLEF 2015
Coverage (COV)100
7
Hierarchical classificationAMB
Coverage (COV)100
7
Hierarchical classificationCaltech-101
Coverage100
7
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