Saved in:
Bibliographic Details
Main Authors: Zhou, Xun, Wu, Xingyu, Feng, Liang, Lu, Zhichao, Tan, Kay Chen
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.11330
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910750394548224
author Zhou, Xun
Wu, Xingyu
Feng, Liang
Lu, Zhichao
Tan, Kay Chen
author_facet Zhou, Xun
Wu, Xingyu
Feng, Liang
Lu, Zhichao
Tan, Kay Chen
contents Transferable neural architecture search (TNAS) has been introduced to design efficient neural architectures for multiple tasks, to enhance the practical applicability of NAS in real-world scenarios. In TNAS, architectural knowledge accumulated in previous search processes is reused to warm up the architecture search for new tasks. However, existing TNAS methods still search in an extensive search space, necessitating the evaluation of numerous architectures. To overcome this challenge, this work proposes a novel transfer paradigm, i.e., design principle transfer. In this work, the linguistic description of various structural components' effects on architectural performance is termed design principles. They are learned from established architectures and then can be reused to reduce the search space by discarding unpromising architectures. Searching in the refined search space can boost both the search performance and efficiency for new NAS tasks. To this end, a large language model (LLM)-assisted design principle transfer (LAPT) framework is devised. In LAPT, LLM is applied to automatically reason the design principles from a set of given architectures, and then a principle adaptation method is applied to refine these principles progressively based on the new search results. Experimental results show that LAPT can beat the state-of-the-art TNAS methods on most tasks and achieve comparable performance on others.
format Preprint
id arxiv_https___arxiv_org_abs_2408_11330
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Design Principle Transfer in Neural Architecture Search via Large Language Models
Zhou, Xun
Wu, Xingyu
Feng, Liang
Lu, Zhichao
Tan, Kay Chen
Machine Learning
Computation and Language
Transferable neural architecture search (TNAS) has been introduced to design efficient neural architectures for multiple tasks, to enhance the practical applicability of NAS in real-world scenarios. In TNAS, architectural knowledge accumulated in previous search processes is reused to warm up the architecture search for new tasks. However, existing TNAS methods still search in an extensive search space, necessitating the evaluation of numerous architectures. To overcome this challenge, this work proposes a novel transfer paradigm, i.e., design principle transfer. In this work, the linguistic description of various structural components' effects on architectural performance is termed design principles. They are learned from established architectures and then can be reused to reduce the search space by discarding unpromising architectures. Searching in the refined search space can boost both the search performance and efficiency for new NAS tasks. To this end, a large language model (LLM)-assisted design principle transfer (LAPT) framework is devised. In LAPT, LLM is applied to automatically reason the design principles from a set of given architectures, and then a principle adaptation method is applied to refine these principles progressively based on the new search results. Experimental results show that LAPT can beat the state-of-the-art TNAS methods on most tasks and achieve comparable performance on others.
title Design Principle Transfer in Neural Architecture Search via Large Language Models
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2408.11330