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Hauptverfasser: Fang, Zitao, DU, Guodong, Yu, Shuyang, Guo, Yifei, Zhang, Yiwei, Cao, Yiyao, Li, Jing, Tang, Ho-Kin, Goh, Sim Kuan
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2503.05320
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author Fang, Zitao
DU, Guodong
Yu, Shuyang
Guo, Yifei
Zhang, Yiwei
Cao, Yiyao
Li, Jing
Tang, Ho-Kin
Goh, Sim Kuan
author_facet Fang, Zitao
DU, Guodong
Yu, Shuyang
Guo, Yifei
Zhang, Yiwei
Cao, Yiyao
Li, Jing
Tang, Ho-Kin
Goh, Sim Kuan
contents Fine-tuning pre-trained models on targeted datasets enhances task-specific performance but often comes at the expense of generalization. Model merging techniques, which integrate multiple fine-tuned models into a single multi-task model through task arithmetic, offer a promising solution. However, task interference remains a fundamental challenge, leading to performance degradation and suboptimal merged models. Existing approaches largely overlooked the fundamental roles of neurons, their connectivity, and activation, resulting in a merging process and a merged model that does not consider how neurons relay and process information. In this work, we present the first study that relies on neuronal mechanisms for model merging. Specifically, we decomposed task-specific representations into two complementary neuronal subspaces that regulate input sensitivity and task adaptability. Leveraging this decomposition, we introduced NeuroMerging, a novel merging framework developed to mitigate task interference within neuronal subspaces, enabling training-free model fusion across diverse tasks. Through extensive experiments, we demonstrated that NeuroMerging achieved superior performance compared to existing methods on multi-task benchmarks across both natural language and vision domains. Our findings highlighted the importance of aligning neuronal mechanisms in model merging, offering new insights into mitigating task interference and improving knowledge fusion. Our project is available at https://ZzzitaoFang.github.io/projects/NeuroMerging/.
format Preprint
id arxiv_https___arxiv_org_abs_2503_05320
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle To See a World in a Spark of Neuron: Disentangling Multi-task Interference for Training-free Model Merging
Fang, Zitao
DU, Guodong
Yu, Shuyang
Guo, Yifei
Zhang, Yiwei
Cao, Yiyao
Li, Jing
Tang, Ho-Kin
Goh, Sim Kuan
Machine Learning
Artificial Intelligence
Fine-tuning pre-trained models on targeted datasets enhances task-specific performance but often comes at the expense of generalization. Model merging techniques, which integrate multiple fine-tuned models into a single multi-task model through task arithmetic, offer a promising solution. However, task interference remains a fundamental challenge, leading to performance degradation and suboptimal merged models. Existing approaches largely overlooked the fundamental roles of neurons, their connectivity, and activation, resulting in a merging process and a merged model that does not consider how neurons relay and process information. In this work, we present the first study that relies on neuronal mechanisms for model merging. Specifically, we decomposed task-specific representations into two complementary neuronal subspaces that regulate input sensitivity and task adaptability. Leveraging this decomposition, we introduced NeuroMerging, a novel merging framework developed to mitigate task interference within neuronal subspaces, enabling training-free model fusion across diverse tasks. Through extensive experiments, we demonstrated that NeuroMerging achieved superior performance compared to existing methods on multi-task benchmarks across both natural language and vision domains. Our findings highlighted the importance of aligning neuronal mechanisms in model merging, offering new insights into mitigating task interference and improving knowledge fusion. Our project is available at https://ZzzitaoFang.github.io/projects/NeuroMerging/.
title To See a World in a Spark of Neuron: Disentangling Multi-task Interference for Training-free Model Merging
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2503.05320