LOFT: Low-Rank Orthogonal Fine-Tuning via Task-Aware Support Selection
Lanxin Zhao, Bamdev Mishra, Pratik Jawanpuria, Lequan Lin, Dai Shi, Junbin Gao, Andi Han

TL;DR
LOFT introduces a low-rank orthogonal fine-tuning framework that explicitly separates subspace choice and transformation, enabling task-aware support selection for improved efficiency across multiple domains.
Contribution
It unifies orthogonal PEFT methods under a common formulation and highlights support selection as a key factor, proposing practical strategies informed by downstream signals.
Findings
Supports informed by downstream signals improve adaptation efficiency.
LOFT recovers principal-subspace orthogonal adaptation methods.
Gradient-informed support selection enhances performance under resource constraints.
Abstract
Orthogonal parameter-efficient fine-tuning (PEFT) adapts pretrained weights through structure-preserving multiplicative transformations, but existing methods often conflate two distinct design choices: the subspace in which adaptation occurs and the transformation applied within that subspace. This paper introduces LOFT, a low-rank orthogonal fine-tuning framework that explicitly separates these two components. By viewing orthogonal adaptation as a multiplicative subspace rotation, LOFT provides a unified formulation that recovers representative orthogonal PEFT methods, including coordinate-, butterfly-, Householder-, and principal-subspace-based variants. More importantly, this perspective exposes support selection as a central design axis rather than a byproduct of a particular parameterization. We develop a first-order analysis showing that useful adaptation supports should be…
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