AI RESEARCH
Learning Theory of Transformers: Local-to-Global Approximation via Softmax Partition of Unity
arXiv CS.LG
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ArXi:2605.08811v1 Announce Type: cross This paper investigates the learning theory of Transformer networks for regression tasks on the compact Euclidean domain $[0,1]^d$ and $d$-dimensional compact Riemannian manifolds. We propose a novel constructive approximation framework for Transformers that builds local approximations of the target function and aggregates them into a global approximation via softmax partition of unity. This approach leverages the attention mechanism to achieve spatial localization through affine transformations of the input.