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Main Authors: Sonmezer, Mert, Zheng, Matthew, Yanardag, Pinar
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.15022
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author Sonmezer, Mert
Zheng, Matthew
Yanardag, Pinar
author_facet Sonmezer, Mert
Zheng, Matthew
Yanardag, Pinar
contents Low-rank Adaptation (LoRA) models have revolutionized the personalization of pre-trained diffusion models by enabling fine-tuning through low-rank, factorized weight matrices specifically optimized for attention layers. These models facilitate the generation of highly customized content across a variety of objects, individuals, and artistic styles without the need for extensive retraining. Despite the availability of over 100K LoRA adapters on platforms like Civit.ai, users often face challenges in navigating, selecting, and effectively utilizing the most suitable adapters due to their sheer volume, diversity, and lack of structured organization. This paper addresses the problem of selecting the most relevant and diverse LoRA models from this vast database by framing the task as a combinatorial optimization problem and proposing a novel submodular framework. Our quantitative and qualitative experiments demonstrate that our method generates diverse outputs across a wide range of domains.
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spellingShingle LoRAverse: A Submodular Framework to Retrieve Diverse Adapters for Diffusion Models
Sonmezer, Mert
Zheng, Matthew
Yanardag, Pinar
Computer Vision and Pattern Recognition
Low-rank Adaptation (LoRA) models have revolutionized the personalization of pre-trained diffusion models by enabling fine-tuning through low-rank, factorized weight matrices specifically optimized for attention layers. These models facilitate the generation of highly customized content across a variety of objects, individuals, and artistic styles without the need for extensive retraining. Despite the availability of over 100K LoRA adapters on platforms like Civit.ai, users often face challenges in navigating, selecting, and effectively utilizing the most suitable adapters due to their sheer volume, diversity, and lack of structured organization. This paper addresses the problem of selecting the most relevant and diverse LoRA models from this vast database by framing the task as a combinatorial optimization problem and proposing a novel submodular framework. Our quantitative and qualitative experiments demonstrate that our method generates diverse outputs across a wide range of domains.
title LoRAverse: A Submodular Framework to Retrieve Diverse Adapters for Diffusion Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.15022