次回の更新記事:答えのない問題に取り組むAIエージェントの走らせ方…(公開予定日:2026年07月13日)
AIDB Daily Papers

エージェントによるニューラルアーキテクチャ探索

原題: Agentic Neural Architecture Search
著者: Seokhoon Jeong, Mijung Kim, Taehwan Kim
公開日: 2026-07-08 | 分野: LLM アーキテクチャ ニューラルネットワーク AutoML cs.AI

※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。

ポイント

  • LLMが生成した設計図をNASが最適化するハイブリッド手法を提案した。
  • 手動の探索空間設計を不要にし、LLMとNASの役割分担を最適化した点が新しい。
  • 多様な17のタスクで既存手法を上回り、11のタスクで最高精度を達成した。

Abstract

Neural architecture search (NAS) methods have grown increasingly efficient, yet they remain bounded by manually engineered search spaces that require substantial domain expertise and must be rebuilt for every new task. Large language models (LLMs) can generate architectures in an open-ended space, but how to optimally divide the labor between LLM-driven design and NAS-driven search remains unexplored. We propose a mechanism that bridges these two paradigms: an LLM produces a high-quality seed architecture, then decomposes it into a "slotted architecture", a scaffold with named, interchangeable module slots that automatically defines a bounded, task-specific search space for conventional NAS to explore, without manual engineering. We instantiate this mechanism in AgentNAS, a modular three-phase pipeline in which each component's contribution can be measured independently. On 17 tasks spanning classification, dense regression, segmentation, and multi-label tagging across diverse modalities (NAS-Bench-360 and Unseen NAS), AgentNAS establishes a new state of the art on 11 tasks, outperforming published baselines including task-specific expert designs. Ablation studies show that the two search mechanisms are broadly complementary: the LLM-generated seed already surpasses published baselines on the majority of tasks, and NAS delivers additional gains in most cases through combinatorial recombination across slots, a mode of search that independent LLM samples cannot replicate. These patterns hold across three LLMs of different capability levels, confirming that the division of labor is robust. Our code is available at https://github.com/alroimfebruary/AgentNAS.

Paper AI Chat

この論文のPDF全文を対象にAIに質問できます。

質問の例:

AIチャット機能を利用するには、ログインまたは会員登録(無料)が必要です。

会員登録 / ログイン

関連するAIDB記事