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Main Authors: Lorandi, Michela, Belz, Anya
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.12345
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author Lorandi, Michela
Belz, Anya
author_facet Lorandi, Michela
Belz, Anya
contents Parameter-efficient fine-tuning (PEFT) techniques offer task-specific fine-tuning at a fraction of the cost of full fine-tuning, but require separate fine-tuning for every new task (combination). In this paper, we explore three ways of generalising beyond single-task training/inference: (i) training on combinations of multiple, related datasets; (ii) at inference, composing the weight matrices of separately trained PEFT modules; and (iii) at inference, composing the outputs of separately trained PEFT modules. We test these approaches on three different LLMs, QLoRA as the PEFT technique, and three sets of controlled text generation datasets for sentiment control, topic control, and multi-attribute control. We find that summing PEFT module outputs is a particularly strong composition method, which consistently either outperforms or matches the performance of alternative approaches. This is the case even when comparing against single-task specialised modules on the single-task test set, where three-module output composition achieves an average 2% point performance increase across all models for sentiment control.
format Preprint
id arxiv_https___arxiv_org_abs_2605_12345
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Output Composability of QLoRA PEFT Modules for Plug-and-Play Attribute-Controlled Text Generation
Lorandi, Michela
Belz, Anya
Computation and Language
Parameter-efficient fine-tuning (PEFT) techniques offer task-specific fine-tuning at a fraction of the cost of full fine-tuning, but require separate fine-tuning for every new task (combination). In this paper, we explore three ways of generalising beyond single-task training/inference: (i) training on combinations of multiple, related datasets; (ii) at inference, composing the weight matrices of separately trained PEFT modules; and (iii) at inference, composing the outputs of separately trained PEFT modules. We test these approaches on three different LLMs, QLoRA as the PEFT technique, and three sets of controlled text generation datasets for sentiment control, topic control, and multi-attribute control. We find that summing PEFT module outputs is a particularly strong composition method, which consistently either outperforms or matches the performance of alternative approaches. This is the case even when comparing against single-task specialised modules on the single-task test set, where three-module output composition achieves an average 2% point performance increase across all models for sentiment control.
title Output Composability of QLoRA PEFT Modules for Plug-and-Play Attribute-Controlled Text Generation
topic Computation and Language
url https://arxiv.org/abs/2605.12345