Everything about Transfer Learning. 迁移学习.
Papers • Tutorials • Research areas • Theory • Survey • Code • Dataset & benchmark
Thesis • Scholars • Contests • Journal/conference • Applications • Others • Contributing
Widely used by top conferences and journals:
- Conferences: [CVPR'22] [NeurIPS'21] [IJCAI'21] [ESEC/FSE'20] [IJCNN'20] [ACMMM'18] [ICME'19]
- Journals: [IEEE TKDE] [ACM TIST] [Information sciences] [Neurocomputing] [IEEE Transactions on Cognitive and Developmental Systems]
@Misc{transferlearning.xyz,
howpublished = {\url{http://transferlearning.xyz}},
title = {Everything about Transfer Learning and Domain Adapation},
author = {Wang, Jindong and others}
}
Related Codes:
- Large language model evaluation: [llm-eval]
- Robust machine learning: [robustlearn: robust machine learning]
- Semi-supervised learning: [USB: unified semi-supervised learning benchmark] | [TorchSSL: a unified SSL library]
- Prompt benchmark: [PromptBench: adverarial robustness of prompts of LLMs]
- Federated learning: [PersonalizedFL: library for personalized federated learning]
- Activity recognition and machine learning [Activity recognition]|[Machine learning]
NOTE: You can directly open the code in Gihub Codespaces on the web to run them without downloading! Also, try github.dev.
0.Papers (论文)
Awesome transfer learning papers (迁移学习文章汇总)
- Paperweekly: A website to recommend and read paper notes
Latest papers:
- By topic: doc/awesome_papers.md
- By date: doc/awesome_paper_date.md
Updated at 2023-07-18:
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Benchmarking Algorithms for Federated Domain Generalization [arxiv]
- Benchmark algorthms for federated domain generalization 对联邦域泛化算法进行的benchmark
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DISPEL: Domain Generalization via Domain-Specific Liberating [arxiv]
- Domain generalization via domain-specific liberating
Updated at 2023-07-05:
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Review of Large Vision Models and Visual Prompt Engineering [arxiv]
- A survey of large vision model and prompt tuning 一个关于大视觉模型的prompt tuning的综述
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Intra- & Extra-Source Exemplar-Based Style Synthesis for Improved Domain Generalization [arxiv]
- Exemplar-based style synthesis for domain generalization 样例格式合成用于DG
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SAM-DA: UAV Tracks Anything at Night with SAM-Powered Domain Adaptation [arxiv]
- Using SAM for domain adaptation 使用segment anything进行domain adaptation
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Unified Transfer Learning Models for High-Dimensional Linear Regression [arxiv]
- Transfer learning for high-dimensional linar regression 迁移学习用于高维线性回归
1.Introduction and Tutorials (简介与教程)
Want to quickly learn transfer learning?想尽快入门迁移学习?看下面的教程。
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Books 书籍
- Introduction to Transfer Learning: Algorithms and Practice [Buy or read]
- 《迁移学习》(杨强) [Buy] [English version]
- 《迁移学习导论》(王晋东、陈益强著) [Homepage] [Buy]
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Blogs 博客
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Video tutorials 视频教程
- Transfer learning 迁移学习:
- Domain generalization 领域泛化:
- Domain adaptation 领域自适应:
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Brief introduction and slides 简介与ppt资料
- Recent advance of transfer learning
- Domain generalization survey
- Brief introduction in Chinese
- 迁移学习中的领域自适应方法 Domain adaptation: PDF | Video on Bilibili | Video on Youtube
- Tutorial on transfer learning by Qiang Yang: IJCAI'13 | 2016 version
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Talk is cheap, show me the code 动手教程、代码、数据
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Transfer Learning Scholars and Labs - 迁移学习领域的著名学者、代表工作及实验室介绍
2.Transfer Learning Areas and Papers (研究领域与相关论文)
- Survey
- Theory
- Per-training/Finetuning
- Knowledge distillation
- Traditional domain adaptation
- Deep domain adaptation
- Domain generalization
- Source-free domain adaptation
- Multi-source domain adaptation
- Heterogeneous transfer learning
- Online transfer learning
- Zero-shot / few-shot learning
- Multi-task learning
- Transfer reinforcement learning
- Transfer metric learning
- Federated transfer learning
- Lifelong transfer learning
- Safe transfer learning
- Transfer learning applications
3.Theory and Survey (理论与综述)
Here are some articles on transfer learning theory and survey.
Survey (综述文章):
- 2023 Source-Free Unsupervised Domain Adaptation: A Survey [arxiv]
- 2022 Transfer Learning for Future Wireless Networks: A Comprehensive Survey
- 2022 A Review of Deep Transfer Learning and Recent Advancements
- 2022 Transferability in Deep Learning: A Survey, from Mingsheng Long in THU.
- 2021 Domain generalization: IJCAI-21 Generalizing to Unseen Domains: A Survey on Domain Generalization | 知乎文章 | 微信公众号
- First survey on domain generalization
- 第一篇对Domain generalization (领域泛化)的综述
- 2021 Vision-based activity recognition: A Survey of Vision-Based Transfer Learning in Human Activity Recognition
- 2021 ICSAI A State-of-the-Art Survey of Transfer Learning in Structural Health Monitoring
- 2020 Transfer learning: survey and classification, Advances in Intelligent Systems and Computing.
- 2020 迁移学习最新survey,来自中科院计算所庄福振团队,发表在Proceedings of the IEEE: A Comprehensive Survey on Transfer Learning
- 2020 负迁移的综述:Overcoming Negative Transfer: A Survey
- 2020 知识蒸馏的综述: Knowledge Distillation: A Survey
- 用transfer learning进行sentiment classification的综述:A Survey of Sentiment Analysis Based on Transfer Learning
- 2019 一篇新survey:Transfer Adaptation Learning: A Decade Survey
- 2018 一篇迁移度量学习的综述: Transfer Metric Learning: Algorithms, Applications and Outlooks
- 2018 一篇最近的非对称情况下的异构迁移学习综述:Asymmetric Heterogeneous Transfer Learning: A Survey
- 2018 Neural style transfer的一个survey:Neural Style Transfer: A Review
- 2018 深度domain adaptation的一个综述:Deep Visual Domain Adaptation: A Survey
- 2017 多任务学习的综述,来自香港科技大学杨强团队:A survey on multi-task learning
- 2017 异构迁移学习的综述:A survey on heterogeneous transfer learning
- 2017 跨领域数据识别的综述:Cross-dataset recognition: a survey
- 2016 A survey of transfer learning。其中交代了一些比较经典的如同构、异构等学习方法代表性文章。
- 2015 中文综述:迁移学习研究进展
- 2010 A survey on transfer learning
- Survey on applications - 应用导向的综述:
- 视觉domain adaptation综述:Visual Domain Adaptation: A Survey of Recent Advances
- 迁移学习应用于行为识别综述:Transfer Learning for Activity Recognition: A Survey
- 迁移学习与增强学习:Transfer Learning for Reinforcement Learning Domains: A Survey
- 多个源域进行迁移的综述:A Survey of Multi-source Domain Adaptation。
Theory (理论文章):
- ICML-20 Few-shot domain adaptation by causal mechanism transfer
- The first work on causal transfer learning
- 日本理论组大佬Sugiyama的工作,causal transfer learning
- CVPR-19 Characterizing and Avoiding Negative Transfer
- Characterizing and avoid negative transfer
- 形式化并提出如何避免负迁移
- ICML-20 On Learning Language-Invariant Representations for Universal Machine Translation
- Theory for universal machine translation
- 对统一机器翻译模型进行了理论论证
- NIPS-06 Analysis of Representations for Domain Adaptation
- ML-10 A Theory of Learning from Different Domains
- NIPS-08 Learning Bounds for Domain Adaptation
- COLT-09 Domain adaptation: Learning bounds and algorithms
- MMD paper:A Hilbert Space Embedding for Distributions and A Kernel Two-Sample Test
- Multi-kernel MMD paper: Optimal kernel choice for large-scale two-sample tests
4.Code (代码)
Unified codebases for:
- Deep domain adaptation
- Deep domain generalization
- See all codes here: https://github.com/jindongwang/transferlearning/tree/master/code.
More: see HERE and HERE for an instant run using Google's Colab.
5.Transfer Learning Scholars (著名学者)
Here are some transfer learning scholars and labs.
全部列表以及代表工作性见这里
Please note that this list is far not complete. A full list can be seen in here. Transfer learning is an active field. If you are aware of some scholars, please add them here.
6.Transfer Learning Thesis (硕博士论文)
Here are some popular thesis on transfer learning.
这里, 提取码:txyz。
7.Datasets and Benchmarks (数据集与评测结果)
Please see HERE for the popular transfer learning datasets and benchmark results.
这里整理了常用的公开数据集和一些已发表的文章在这些数据集上的实验结果。
8.Transfer Learning Challenges (迁移学习比赛)
Journals and Conferences
See here for a full list of related journals and conferences.
Applications (迁移学习应用)
- Computer vision
- Medical and healthcare
- Natural language processing
- Time series
- Speech
- Multimedia
- Recommendation
- Human activity recognition
- Autonomous driving
- Others
See HERE for transfer learning applications.
迁移学习应用请见这里。
Other Resources (其他资源)
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Call for papers:
- Advances in Transfer Learning: Theory, Algorithms, and Applications, DDL: October 2021
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Related projects:
Contributing (欢迎参与贡献)
If you are interested in contributing, please refer to HERE for instructions in contribution.
Copyright notice
[Notes]This Github repo can be used by following the corresponding licenses. I want to emphasis that it may contain some PDFs or thesis, which were downloaded by me and can only be used for academic purposes. The copyrights of these materials are owned by corresponding publishers or organizations. All this are for better adademic research. If any of the authors or publishers have concerns, please contact me to delete or replace them.