Papers
arxiv:2506.08001

Reparameterized LLM Training via Orthogonal Equivalence Transformation

Published on Jun 9
· Submitted by wy1iu on Jun 12
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Abstract

POET is a reParameterized training algorithm using Orthogonal Equivalence Transformation to optimize neurons in large language models, ensuring stable training and improved generalization.

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While large language models (LLMs) are driving the rapid advancement of artificial intelligence, effectively and reliably training these large models remains one of the field's most significant challenges. To address this challenge, we propose POET, a novel reParameterized training algorithm that uses Orthogonal Equivalence Transformation to optimize neurons. Specifically, POET reparameterizes each neuron with two learnable orthogonal matrices and a fixed random weight matrix. Because of its provable preservation of spectral properties of weight matrices, POET can stably optimize the objective function with improved generalization. We further develop efficient approximations that make POET flexible and scalable for training large-scale neural networks. Extensive experiments validate the effectiveness and scalability of POET in training LLMs.

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