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arXiv cs.LG / 2026/3/11

Ideas & Deep AnalysisModels & Research

要点

  • 本論文は、オンライン継続学習(OCL)設定におけるトランスフォーマーの継続学習を扱っており、データが非定常なストリームとして逐次与えられ、各サンプルは一度しか観測されない状況を想定している。
  • プロンプトやアダプターのような従来のパラメータ効率的適応法は、漸進的な勾配更新に依存しており、このような厳しいオンラインシナリオでは苦戦する。
  • 著者らはRouting without Forgetting(RwF)を提案した。これはModern Hopfield Networksに着想を得たエネルギーベースの連想検索層を用いた新しいトランスフォーマーアーキテクチャであり、繰り返し最適化を行わずに入力ごとに適切な表現部分空間を動的に選択する。
  • RwFは各層において単一ステップの連想検索により動的プロンプトを生成し、各フォワードパス内で入力に応じたルーティングを可能にすることで、Split-ImageNet-RやSplit-ImageNet-Sなどのクラス増分ベンチマークにおいて、特に少数ショット学習領域で性能を向上させている。
  • この手法は、エネルギーベースの連想的ルーティングをトランスフォーマーのバックボーンに直接組み込むことで、オンライン継続学習に対してより原理的かつ効果的な基盤を提供する。

Computer Science > Machine Learning

arXiv:2603.09576 (cs)
[Submitted on 10 Mar 2026]

Title:Routing without Forgetting

View a PDF of the paper titled Routing without Forgetting, by Alessio Masano and 4 other authors
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Abstract:Continual learning in transformers is commonly addressed through parameter-efficient adaptation: prompts, adapters, or LoRA modules are specialized per task while the backbone remains frozen. Although effective in controlled multi-epoch settings, these approaches rely on gradual gradient-based specialization and struggle in Online Continual Learning (OCL), where data arrive as a non-stationary stream and each sample may be observed only once. We recast continual learning in transformers as a routing problem: under strict online constraints, the model must dynamically select the appropriate representational subspace for each input without explicit task identifiers or repeated optimization. We thus introduce Routing without Forgetting (RwF), a transformer architecture augmented with energy-based associative retrieval layers inspired by Modern Hopfield Networks. Instead of storing or merging task-specific prompts, RwF generates dynamic prompts through single-step associative retrieval over the transformer token embeddings at each layer. Retrieval corresponds to the closed-form minimization of a strictly convex free-energy functional, enabling input-conditioned routing within each forward pass, independently of iterative gradient refinement. Across challenging class-incremental benchmarks, RwF improves over existing prompt-based methods. On Split-ImageNet-R and Split-ImageNet-S, RwF outperforms prior prompt-based approaches by a large margin, even in few-shot learning regimes. These results indicate that embedding energy-based associative routing directly within the transformer backbone provides a principled and effective foundation for OCL.
Subjects: Machine Learning (cs.LG); Artificial Intelligence (cs.AI)
Cite as: arXiv:2603.09576 [cs.LG]
  (or arXiv:2603.09576v1 [cs.LG] for this version)
  https://doi.org/10.48550/arXiv.2603.09576
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arXiv-issued DOI via DataCite

Submission history

From: Giovanni Bellitto [view email]
[v1] Tue, 10 Mar 2026 12:23:46 UTC (3,687 KB)
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