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ファインチューニングLSTM×LSTMを用いた転移学習×
分野深層学習深層学習
系統Machine learningMachine learning
提唱年2018 (fine-tuning paradigm formalised); LSTM core: 19972018 (ULMFiT; concept since ~2010)
提唱者Howard, J. & Ruder, S. (ULMFiT); foundational LSTM by Hochreiter & SchmidhuberHoward, J. & Ruder, S. (ULMFiT); general concept: Pan & Yang (2010)
種類Supervised sequential model with transfer learningTransfer learning / Sequential model
原典Howard, J., & Ruder, S. (2018). Universal Language Model Fine-tuning for Text Classification. Proceedings of the 56th Annual Meeting of the Association for Computational Linguistics (ACL), 328–339. DOI ↗Howard, J. & Ruder, S. (2018). Universal Language Model Fine-Tuning for Text Classification. Proceedings of the 56th Annual Meeting of the Association for Computational Linguistics (ACL), 328–339. DOI ↗
別名Fine-Tuned LSTM, LSTM Fine-Tuning, Pre-trained LSTM with Task Adaptation, LSTM Transfer LearningLSTM Transfer Learning, Pre-trained LSTM, LSTM Fine-Tuning, ULMFiT-style LSTM Transfer
関連65
概要Fine-Tuned LSTM adapts a Long Short-Term Memory network pre-trained on a large corpus to a specific downstream task — such as text classification, sentiment analysis, or sequence labeling — by continuing training on task-specific labeled data. Popularised by the ULMFiT framework, this approach achieves strong performance even when labeled data is scarce.Transfer Learning with LSTM is a technique in which a Long Short-Term Memory network is first pre-trained on a large source corpus or task, and then its learned weights are transferred and fine-tuned on a smaller target task. This approach, popularized by ULMFiT (Howard & Ruder, 2018), allows LSTM-based models to reach strong performance even when labeled target data is scarce.
ScholarGateデータセット
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  1. v1
  2. 2 出典
  3. PUBLISHED

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ScholarGate手法を比較: Fine-Tuned LSTM · Transfer Learning with LSTM. 2026-06-19に以下より取得 https://scholargate.app/ja/compare