Crafting Reversible SFT Behaviors in Large Language Models
Yuping Lin, Pengfei He, Yue Xing, Yingqian Cui, Jiayuan Ding, Subhabrata Mukherjee, Hui Liu, Zhen Xiang

TL;DR
This paper introduces methods to create sparse, causally necessary subnetworks within large language models that encode specific behaviors, enabling deliberate control and reversal of these behaviors at inference time.
Contribution
It proposes Loss-Constrained Dual Descent and SFT-Eraser techniques to embed and reverse behaviors via sparse carriers, advancing behavior control in language models.
Findings
Sparse carriers preserve target behaviors and enable reversal.
Structure rather than trigger design is key for behavior reversal.
Carriers are causally necessary for SFT-induced behaviors.
Abstract
Supervised fine-tuning (SFT) induces new behaviors in large language models, yet imposes no structural constraint on how these behaviors are distributed within the model. Existing behavior interpretation methods, such as circuit attribution approaches, identify sparse subnetworks correlated with SFT-induced behaviors post-hoc. However, such correlations do not imply *causal necessity*, limiting the ability to selectively control SFT-induced behaviors at inference time. We pursue an alternative by asking: can an SFT-induced behavior be deliberately compressed into a sparse, mechanistically necessary subnetwork, termed a *carrier*, while remaining controllable at inference time without weight modification? We propose (a) **Loss-Constrained Dual Descent (LCDD)**, which constructs such carriers by jointly optimizing routing masks and model weights under an explicit utility budget, and (b)…
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