AI RESEARCH

Robust Basis Spline Decoupling for the Compression of Transformer Models

arXiv CS.AI

ArXi:2605.18794v1 Announce Type: cross Decoupling is a powerful modeling paradigm for representing multivariate functions as compositions of linear transformations and univariate nonlinear functions. A single-layer decoupling can be viewed as a fully connected neural network with a single hidden layer and flexible activation functions, providing a direct link with neural networks. Because of this, the use of decoupling methods has gained increasing attention in neural network domains, particularly compression, since it enables structured approximations with reduced parameter complexity.