Hui Chen | Computer Science | Young Scientist Award

Mr. Hui Chen | Computer Science | Young Scientist Award

Macquarie University | Australia

Hui Chen is a dedicated researcher in computer science with a strong foundation in applied statistics and advanced computational methods, currently pursuing doctoral studies at Macquarie University, with prior academic training in applied statistics at Lanzhou University and Suzhou University, and an established research portfolio spanning federated learning, Bayesian modeling, anomaly detection, and optimization algorithms, reflected through publications in leading journals such as IEEE Transactions on Neural Networks and Learning Systems, Information Fusion, and Computer Methods and Programs in Biomedicine, as well as contributions to high-impact conferences including ACM SIGKDD and IJCAI, and with professional service as reviewer for prestigious journals and program committee member of major AI conferences, Hui Chen combines methodological innovation with practical applications in machine learning and data-driven inference, advancing the state of the art in federated and personalized learning, uncertainty quantification, and intelligent optimization systems for a wide range of real-world challenges.

Profile

Orcid

Education

Hui Chen’s academic journey began with a Bachelor of Science degree in Applied Statistics from Suzhou University, where he developed a strong quantitative foundation and analytical mindset for tackling statistical and computational problems, followed by a Master of Science degree in Applied Statistics at Lanzhou University, where he deepened his expertise in probability theory, statistical modeling, and computational methods for complex data analysis, and continued to refine his understanding of interdisciplinary applications bridging mathematics, computer science, and applied research, and he is currently pursuing a Doctor of Philosophy in Computer Science at Macquarie University, focusing on cutting-edge areas of federated learning, Bayesian inference, and machine learning frameworks for uncertainty quantification and time series modeling, which together reflect a coherent progression from fundamental statistical theory through applied statistical methods to advanced computational intelligence, preparing him for impactful contributions to artificial intelligence research and its applications in scientific and industrial domains.

Professional Experience

Hui Chen has gained extensive research experience through academic and collaborative projects that integrate statistics, machine learning, and artificial intelligence, with publications in both journals and conferences that demonstrate his capability in federated learning, Bayesian modeling, and optimization methods, including work on efficient uncertainty quantification, weakly augmented variational autoencoders for anomaly detection, federated neural nonparametric point processes, and optimization algorithms inspired by natural computing, in addition to academic contributions as co-author with international research teams and collaborative efforts across computer science and applied statistics, he has contributed as a program committee member for prestigious conferences such as NeurIPS, ICLR, IJCAI, KDD, ACML, ECMLPKDD, and DSAA, while also serving as a reviewer for high-impact journals including IEEE Transactions on Cybernetics, Machine Learning, Data Mining and Knowledge Discovery, and npj Digital Medicine, which collectively highlight his experience in both research innovation and academic service at the international level.

Awards and Honors

Hui Chen has earned recognition through active involvement in the global academic community, contributing to prestigious conferences and journals, where he has been entrusted with important roles such as Session Chair at PAKDD and Program Committee Member at top conferences including NeurIPS, ICLR, IJCAI, KDD, ACML, ECMLPKDD, and DSAA, while also being invited to review for leading journals such as IEEE Transactions on Cybernetics, Transactions on Machine Learning Research, Data Mining and Knowledge Discovery, and npj Digital Medicine, responsibilities that reflect both the academic community’s recognition of his expertise and his professional standing in the fields of machine learning and artificial intelligence, and although his profile emphasizes scholarly contributions rather than formal awards, his extensive record of publications in internationally recognized journals and conferences alongside service in editorial and reviewing capacities represents professional acknowledgment of his research achievements, academic leadership, and his role in shaping the field’s scientific discourse.

Research Focus

Hui Chen’s research focuses on advancing machine learning and statistical modeling methodologies with a particular emphasis on federated learning, Bayesian inference, uncertainty quantification, and optimization algorithms, seeking to address the challenges of distributed and privacy-preserving learning environments through approaches such as federated subnetwork inference, Bayesian personalized learning, and neural nonparametric point processes, while also developing models for time series anomaly detection using weakly augmented variational autoencoders and designing client–server based recognition systems for non-contact emotion and behavior assessment, his research integrates statistical rigor with scalable computational strategies to enable robust and efficient learning across decentralized and complex data environments, contributing both theoretical advancements and practical applications across domains ranging from healthcare to intelligent systems, and by bridging applied statistics with computer science, his work contributes to building reliable, interpretable, and adaptive AI models that address real-world uncertainties, ensure personalization, and push forward the boundaries of distributed artificial intelligence.

Publication

FedSI: Federated Subnetwork Inference for Efficient Uncertainty Quantification
Year: 2025

SepDiff: Self-Encoding Parameter Diffusion for Learning Latent Semantics
Year: 2025

A client–server based recognition system: Non-contact single/multiple emotional and behavioral state assessment methods
Year: 2025

Wavae: A weakly augmented variational autoencoder for time series anomaly detection
Year: 2025

Marked temporal Bayesian flow point processes
Year: 2024

Conclusion

Hui Chen is a highly promising researcher with strong technical expertise, impactful publications, and meaningful academic service, making him a strong candidate for recognition. His contributions to federated learning, uncertainty modeling, and applied AI represent valuable advancements to the research community. With continued growth in research leadership, independent project development, and industry collaborations, Hui Chen has the potential to establish himself as a leading figure in the fields of artificial intelligence and machine learning.