AI RESEARCH
Names Don't Matter: Symbol-Invariant Transformer for Open-Vocabulary Learning
arXiv CS.LG
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ArXi:2601.23169v2 Announce Type: replace Current neural architectures lack a principled way to handle interchangeable tokens, i.e., symbols that are semantically equivalent yet distinguishable, such as bound variables. As a result, models trained on fixed vocabularies often struggle to generalize to unseen symbols, even when the underlying semantics remain unchanged. We propose a novel Transformer-based mechanism that is provably invariant to the renaming of interchangeable tokens.