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The Ethereal
Understanding the Parameter Space Geometry of Transformers Encoding Boolean Functions
June 07, 2026 ยท Grace Period ยท ๐ ICML 2026
Authors
Blanka Kรถver, Alexandra Butoi, Anej Svete, Michael Hahn, Ryan Cotterell
arXiv ID
2606.08768
Category
cs.LG: Machine Learning
Citations
0
Venue
ICML 2026
Abstract
Transformers consistently fail to learn certain simple functions that are provably expressible with specific parameter settings. This gap between learnability and expressivity is particularly prominent for sensitive functions -- functions whose output is likely to change if a single bit of the input is flipped -- for example, PARITY. While prior work has established that transformers exhibit a bias toward functions with low average sensitivity, the precise mechanism underlying this bias remains poorly understood. To shed light on this phenomenon, we study the geometry of transformers' parameter space. We show that sensitive functions -- even when representable -- occupy a vanishingly small region that random initialization is very likely to miss. Specifically, we shift the focus from average sensitivity to the full sensitivity profile -- the distribution of sensitivity values across all inputs -- and prove that randomly initialized transformers almost surely compute functions which have low-sensitivity strings. Consequently, any function that lacks such strings is provably unlearnable.
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