Hi there, I'm Junyuan Hong π
I am a researcher on Machine Learning. My research centers around Privacy-Centric Trustworthy Machine Learning. My vision is to enhance trustworthiness (regarding fairness, robustness and security) under the privacy constraint, e.g., federated learning and differentially-private learning. My research highlights:
- [Privacy] in centralized learning with theoretic understanding, analysis tool and empirical algorithms and its financial application in distributed learning.
- [Trustworthiness] β¨ Privacy: Federated Learning and Private Edge-Cloud Collaboration.
- Fair pre-training and federated learningπ.
- Robustness by efficient acquisition against adversarial samplesπ and OoD inferenceπ.
- Secure learning against backdoor attacks in private-data-free distillation.
- Inclusive learning by efficient on-device model adaptationπ, and private outsourcing training and customizable federated learningπ for low-end devices.
See my homepage and CV for more information.