NOETHER: A Constructive Framework for Metamorphic Pattern Discovery from Operator Algebras
Meng Li (1,2,3), Xiaohua Yang (1,2,3), Jie Liu (1,2,3), Shiyu Yan (1,2,3) ((1) School of Computing, University of South China, Hengyang, 421001, China (2) Hunan Engineering Research Center of Software Evaluation, Testing for Intellectual Equipment, Hengyang, 421001

TL;DR
NOETHER introduces a mathematically grounded framework for discovering metamorphic patterns in operator algebras, enhancing automation and provability in metamorphic testing for AI systems.
Contribution
It provides a two-layer, algebraic framework with provable guarantees for metamorphic relation discovery, moving from inductive to deductive methods.
Findings
Systematised a prior inductive catalogue in reactor physics
Derived executable MRs for rotation invariance and reversibility in ML
Falsified the absolute-completeness conjecture with counterexamples
Abstract
Context. Metamorphic Testing is recognised in IEEE/ISO software-testing standards and increasingly recommended for AI systems, but its progress is bottlenecked by metamorphic relation (MR) identification: existing approaches (structured frameworks, mining and evolutionary pipelines, LLM-assisted methods, MetaPattern catalogues) share an inductive grounding that leaves three foundational questions open: origin, closure, and transferability. Objective. We propose a framework whose downstream step from program-induced operator algebra to MetaPattern set is mechanical and provable, while the upstream curation of the algebra is a stated empirical hypothesis with explicit scope precondition. Method. NOETHER is a two-layer framework. The upstream layer is an eight-block decomposition over recurrent mathematical structures (symmetry, order, self-adjoint, time-reversal, limit,…
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