Latest research in robust machine learning, including adversarial/backdoor attack and defense, out-of-distribution (OOD) generalization, and safe transfer learning.
Hosted projects:
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RiFT (ICCV 2023, #Adversarial Robustness, #Generalization, #OOD)
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Diversify (ICLR 2023, #OOD):
- Code | [Out-of-distribution Representation Learning for Time Series Classification
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DRM (KDD 2023, #OOD):
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DDLearn (KDD 2023, #OOD):
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SDMix (IMWUT 2022, #OOD):
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MARC (ACML 2022, #Long-tail):
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FedCLIP (IEEE Data Engineering Bulletin 2023, #OOD #LargeModel):
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ChatGPT robustness (arXiv 2023, #OOD #Adversarial #LargeModel):
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Stay tuned for more upcoming projects!
You can clone or download this repo. Then, go to the project folder that you are interested to run and develop your research.
Related repos:
- Transfer learning: [transferlearning: everything for transfer, domain adaptation, and more]
- Semi-supervised learning: [USB: unified semi-supervised learning benchmark] | [TorchSSL: a unified SSL library]
- Prompt benchmark for large language models: [PromptBench: adverarial robustness of prompts of LLMs]
- Evlauation of large language models: [LLM-eval]
- Federated learning: [PersonalizedFL: library for personalized federated learning]
- Enhancement of large language models: [LLM-enhance]
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