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Autori principali: Wang, Zihan, Ma, Zhongkui, Feng, Xinguo, Mei, Zhiyang, Ma, Ethan, Wang, Derui, Xue, Minhui, Bai, Guangdong
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.12755
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author Wang, Zihan
Ma, Zhongkui
Feng, Xinguo
Mei, Zhiyang
Ma, Ethan
Wang, Derui
Xue, Minhui
Bai, Guangdong
author_facet Wang, Zihan
Ma, Zhongkui
Feng, Xinguo
Mei, Zhiyang
Ma, Ethan
Wang, Derui
Xue, Minhui
Bai, Guangdong
contents Large-scale models are typically adapted to meet the diverse requirements of model owners and users. However, maintaining multiple specialized versions of the model is inefficient. In response, we propose AIM, a novel model modulation paradigm that enables a single model to exhibit diverse behaviors to meet the specific end requirements. AIM enables two key modulation modes: utility and focus modulations. The former provides model owners with dynamic control over output quality to deliver varying utility levels, and the latter offers users precise control to shift model's focused input features. AIM introduces a logits redistribution strategy that operates in a training data-agnostic and retraining-free manner. We establish a formal foundation to ensure AIM's regulation capability, based on the statistical properties of logits ordering via joint probability distributions. Our evaluation confirms AIM's practicality and versatility for Al model modulation, with tasks spanning image classification, semantic segmentation and text generation, and prevalent architectures including ResNet, SegFormer and Llama.
format Preprint
id arxiv_https___arxiv_org_abs_2603_12755
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AI Model Modulation with Logits Redistribution
Wang, Zihan
Ma, Zhongkui
Feng, Xinguo
Mei, Zhiyang
Ma, Ethan
Wang, Derui
Xue, Minhui
Bai, Guangdong
Artificial Intelligence
Large-scale models are typically adapted to meet the diverse requirements of model owners and users. However, maintaining multiple specialized versions of the model is inefficient. In response, we propose AIM, a novel model modulation paradigm that enables a single model to exhibit diverse behaviors to meet the specific end requirements. AIM enables two key modulation modes: utility and focus modulations. The former provides model owners with dynamic control over output quality to deliver varying utility levels, and the latter offers users precise control to shift model's focused input features. AIM introduces a logits redistribution strategy that operates in a training data-agnostic and retraining-free manner. We establish a formal foundation to ensure AIM's regulation capability, based on the statistical properties of logits ordering via joint probability distributions. Our evaluation confirms AIM's practicality and versatility for Al model modulation, with tasks spanning image classification, semantic segmentation and text generation, and prevalent architectures including ResNet, SegFormer and Llama.
title AI Model Modulation with Logits Redistribution
topic Artificial Intelligence
url https://arxiv.org/abs/2603.12755