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Autores principales: Wang, Jiaqi, Zhang, Yusen, Li, Xi
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2505.12470
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author Wang, Jiaqi
Zhang, Yusen
Li, Xi
author_facet Wang, Jiaqi
Zhang, Yusen
Li, Xi
contents Acquiring the parameters of neural networks (NNs) has been one of the most important problems in machine learning since the inception of NNs. Traditional approaches, such as backpropagation and forward-only optimization, acquire parameters via iterative data fitting to gradually optimize them. This paper aims to explore the feasibility of a new direction: acquiring NN parameters via large language model generation. We propose NeuroGen, a generalized and easy-to-implement two-stage approach for NN parameter generation conditioned on descriptions of the data, task, and network architecture. Stage one is Parameter Reference Knowledge Injection, where LLMs are pretrained on NN checkpoints to build foundational understanding of parameter space, whereas stage two is Context-Enhanced Instruction Tuning, enabling LLMs to adapt to specific tasks through enriched, task-aware prompts. Experimental results demonstrate that NeuroGen effectively generates usable NN parameters. Our findings highlight the feasibility of LLM-based NN parameter generation and suggest a promising new paradigm where LLMs and lightweight NNs can coexist synergistically
format Preprint
id arxiv_https___arxiv_org_abs_2505_12470
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NeuroGen: Neural Network Parameter Generation via Large Language Models
Wang, Jiaqi
Zhang, Yusen
Li, Xi
Artificial Intelligence
Acquiring the parameters of neural networks (NNs) has been one of the most important problems in machine learning since the inception of NNs. Traditional approaches, such as backpropagation and forward-only optimization, acquire parameters via iterative data fitting to gradually optimize them. This paper aims to explore the feasibility of a new direction: acquiring NN parameters via large language model generation. We propose NeuroGen, a generalized and easy-to-implement two-stage approach for NN parameter generation conditioned on descriptions of the data, task, and network architecture. Stage one is Parameter Reference Knowledge Injection, where LLMs are pretrained on NN checkpoints to build foundational understanding of parameter space, whereas stage two is Context-Enhanced Instruction Tuning, enabling LLMs to adapt to specific tasks through enriched, task-aware prompts. Experimental results demonstrate that NeuroGen effectively generates usable NN parameters. Our findings highlight the feasibility of LLM-based NN parameter generation and suggest a promising new paradigm where LLMs and lightweight NNs can coexist synergistically
title NeuroGen: Neural Network Parameter Generation via Large Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2505.12470