AI RESEARCH
Quality-Driven Selective Mutation for Deep Learning
arXiv CS.LG
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ArXi:2604.22640v1 Announce Type: cross Mutants testing and debugging in two roles: (i) as test goals and (ii) as substitutes for real faults. Hard-to-kill mutants provide better guidance for test improvement, while realism is essential when mutants are used to simulate real bugs. Building on these roles, selective mutation for deep learning (DL) aims to reduce the cost of mutant generation and execution by choosing operator configurations that yield resistant and realistic mutants. However, the DL literature lacks a unified measure that captures both aspects.