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"Who experiences large model decay and why?" A Hierarchical Framework for Diagnosing Heterogeneous Performance Drift

"Who experiences large model decay and why?" A Hierarchical Framework for Diagnosing Heterogeneous Performance Drift

来源:Arxiv_logoArxiv
英文摘要

Machine learning (ML) models frequently experience performance degradation when deployed in new contexts. Such degradation is rarely uniform: some subgroups may suffer large performance decay while others may not. Understanding where and how large differences in performance arise is critical for designing targeted corrective actions that mitigate decay for the most affected subgroups while minimizing any unintended effects. Current approaches do not provide such detailed insight, as they either (i) explain how average performance shifts arise or (ii) identify adversely affected subgroups without insight into how this occurred. To this end, we introduce a Subgroup-scanning Hierarchical Inference Framework for performance drifT (SHIFT). SHIFT first asks "Is there any subgroup with unacceptably large performance decay due to covariate/outcome shifts?" (Where?) and, if so, dives deeper to ask "Can we explain this using more detailed variable(subset)-specific shifts?" (How?). In real-world experiments, we find that SHIFT identifies interpretable subgroups affected by performance decay, and suggests targeted actions that effectively mitigate the decay.

Harvineet Singh、Fan Xia、Alexej Gossmann、Andrew Chuang、Julian C. Hong、Jean Feng

计算技术、计算机技术

Harvineet Singh,Fan Xia,Alexej Gossmann,Andrew Chuang,Julian C. Hong,Jean Feng."Who experiences large model decay and why?" A Hierarchical Framework for Diagnosing Heterogeneous Performance Drift[EB/OL].(2025-05-31)[2025-07-09].https://arxiv.org/abs/2506.00756.点此复制

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