Jingyi Gao | Probabilistic Modeling | Best Researcher Award

Ms. Jingyi Gao | Probabilistic Modeling | Best Researcher Award

University of Virginia | United States

Author Profile

Google Scholar

Academic and Research Profile of Jingyi Gao

Early Academic Pursuits

Jingyi Gao’s academic foundation is marked by a strong interdisciplinary focus, combining mathematics, computer science, and economics during her undergraduate studies at the University of California, San Diego. She pursued dual degrees-a Bachelor of Science in Mathematics-Computer Science and a Bachelor of Arts in Economics-demonstrating both technical and analytical versatility. Building on this, she earned a Master of Science in Applied Mathematics and Statistics from Johns Hopkins University, where she graduated with a GPA of 3.9/4.0. Currently, she is pursuing a Ph.D. in Systems and Information Engineering at the University of Virginia, with a research concentration in time series prediction, Bayesian probabilistic modeling, and federated learning.

Professional Endeavors

Gao has gained extensive teaching and mentoring experience across prestigious institutions. At the University of Virginia, she has served as a Teaching Assistant for multiple graduate and undergraduate courses, guiding more than a thousand students in areas such as data mining, AI, and big data systems. She has also contributed as a peer mentor for the Data Justice Academy, fostering diversity in data science research. Beyond academia, her professional journey includes research internships at the University of Pittsburgh and Tencent, where she applied machine learning techniques to healthcare stress detection and cloud infrastructure optimization. Her roles highlight both academic excellence and industry-relevant impact.

Contributions and Research Focus

Jingyi Gao’s research contributions lie at the intersection of machine learning, statistical modeling, and human-centered applications. She has worked on federated learning frameworks to enhance privacy in distributed systems, developed adaptive time series models for real-time prediction, and applied deep latent variable models in ergonomics and healthcare monitoring. Her publications span high-impact venues, including work accepted in Pattern Recognition and presented at IEEE conferences. Her efforts in behavioral modeling, stress detection, and multimodal sensor data analysis underscore her commitment to advancing computational methods for practical societal challenges.

Impact and Influence

Through her teaching, mentorship, and publications, Gao has influenced both academic communities and applied research domains. By mentoring underrepresented groups in data science, she has contributed to inclusive research culture. Her innovative approaches in federated learning and human behavior modeling provide scalable solutions for industries like healthcare, occupational health, and cloud services. Her conference presentations at IEEE CASE, ICMLA, and INFORMS further reflect her growing influence in the global research community.

Academic Citations

Although early in her career, Gao’s scholarly work has begun to attract attention, with multiple preprints available on arXiv and accepted publications in well-recognized journals and conferences. As her ongoing Ph.D. research matures and more of her contributions are published, her academic citation count and impact are expected to expand significantly.

Legacy and Future Contributions

Jingyi Gao’s trajectory suggests a promising future as a leader in data science and applied machine learning. With a foundation that bridges theory and practice, she is well-positioned to make lasting contributions in federated learning, real-time predictive modeling, and socially responsible AI applications. Her future work is likely to leave a meaningful legacy in shaping privacy-preserving, adaptive, and human-centered machine learning systems that address pressing global challenges.

Conclusion

In summary, Jingyi Gao exemplifies the qualities of a rising researcher who blends academic rigor, teaching excellence, and innovative research applications. Her interdisciplinary training, impactful publications, and commitment to mentorship signal a strong potential to become a thought leader in her field. With her ongoing contributions and dedication, Gao is poised to significantly advance both the academic and practical dimensions of data-driven science.

Notable Publications

“Gait-Based Hand Load Estimation via Deep Latent Variable Models with Auxiliary Information

  • Author: J Gao, S Lim, S Chung
  • Journal: arXiv preprint arXiv
  • Year: 2025

"Federated automatic latent variable selection in multi-output gaussian processes

  • Author: J Gao, S Chung‏
  • Journal: arXiv preprint arXiv
  • Year: 2025

"Modeling Regularity and Predictability in Human Behavior from Multidimensional Sensing Signals and Personal Characteristics

  • Author: J Gao, R Yan, A Doryab
  • Journal: International Conference on Machine Learning and Applications
  • Year: 2023

"Machine learning to summarize and provide context for sleep and eating schedules

  • Author: T Chen, Y Chen, J Gao, P Gao, JH Moon, J Ren, R Zhu, S Song, JM Clark
  • Journal: bioRxiv
  • Year: 2021

 

Tzu-Chien Wang | AI | Best Researcher Award

Assist. Prof. Dr. Tzu-Chien Wang | AI | Best Researcher Award

Tzu-Chien Wang at Department of Computer Science and Information Management Soochow University, Taiwan

Dr. Tzu-Chien Wang is an Assistant Professor in the Department of Computer Science and Information Management at Soochow University. He specializes in artificial intelligence, data mining, decision support systems, and process improvement techniques. With a strong background in machine learning, natural language processing, and predictive modeling, he has contributed significantly to both academia and industry by developing proof-of-concept models for operational processes.

Professional Profile:

Orcid

Google Scholar

Education Background

Dr. Tzu-Chien Wang earned his Ph.D. in Business Administration from National Taiwan University, where he specialized in data-driven decision-making, artificial intelligence applications, and business intelligence. His doctoral research focused on leveraging machine learning, data mining, and optimization techniques to enhance decision support systems and operational efficiency. His academic training has provided him with a strong foundation in predictive modeling, natural language processing, and process improvement methodologies, which he has effectively applied in both research and industry settings.

Professional Development

Dr. Wang has a diverse professional background, spanning academia, industry, and research institutions. Before joining Soochow University in 2025, he served as an Assistant Professor at Mackay Junior College of Medicine, Nursing, and Management. He also held managerial roles in data development at VisualSoft Information System Co., Ltd. and worked as a Senior Data Analyst at Fubon Life Insurance Co., Ltd. Additionally, he contributed as an Assistant Research Fellow at the Commerce Development Research Institute, focusing on international digital commerce.

Research Focus

His research interests include artificial intelligence, data mining, decision support systems, natural language processing, optimization, clustering, classification, and predictive model building. He is particularly engaged in developing AI-driven solutions for business intelligence, healthcare applications, and digital transformation.

Author Metrics:

Dr. Wang has published extensively in AI, data analytics, and business intelligence. His research contributions can be found on Google Scholar, reflecting his impact on data science and AI applications.

Awards and Honors:

  • High-Age Health Smart Medical Care Industry-Academia Alliance, National Science and Technology Council, Taiwan (2025–2028)

  • AI+BI Agile Development Data Platform Project, Ministry of Economic Affairs, Taiwan (2022)

  • Consumer Data-Driven Precision R&D and Manufacturing (C2M) Promotion Project, Bureau of Energy, Taiwan (2021)

Publication Top Notes

1. Deep Learning-Based Prediction and Revenue Optimization for Online Platform User Journeys

  • Author: T.C. Wang
  • Journal: Quantitative Finance and Economics (2024)
  • Type: Research Article
  • Citations: 6
  • Summary: This study utilizes deep learning techniques to predict user behavior and optimize revenue generation on online platforms, improving personalized recommendations and business strategies.

2. An Integrated Data-Driven Procedure for Product Specification Recommendation Optimization with LDA-LightGBM and QFD

  • Authors: T.C. Wang, R.S. Guo, C. Chen
  • Journal: Sustainability (2023)
  • Type: Research Article
  • Citations: 5
  • Summary: This research presents a hybrid framework combining Latent Dirichlet Allocation (LDA), LightGBM, and Quality Function Deployment (QFD) to optimize product specification recommendations, improving efficiency in sustainable manufacturing.

3. Integrating Latent Dirichlet Allocation and Gradient Boosting Tree Methodology for Insurance Product Development Recommendation

  • Authors: W.Y. Chen, T.C. Wang, R.S. Guo, C. Chen
  • Conference: Proceedings of the 9th International Conference on Big Data Analytics (ICBDA) (2024)
  • Type: Conference Paper
  • Citations: 1
  • Summary: This paper integrates LDA and Gradient Boosting Trees to refine insurance product development recommendations, offering a data-driven approach for personalized insurance solutions.

4. Data Mining Methods to Support C2M Product-Service Systems Design and Recommendation System Based on User Value

  • Authors: T.C. Wang, R.S. Guo, C. Chen
  • Conference: 2022 Portland International Conference on Management of Engineering and Technology (PICMET)
  • Type: Conference Paper
  • Citations: 1
  • Summary: This study explores data mining techniques to enhance Consumer-to-Manufacturer (C2M) product-service system design, optimizing recommendation systems based on user value analysis.

5. Customer Demand Evaluation Method

  • Author: T.C. Wang
  • Patent: TW Patent TW202,414,306 A (2024)
  • Type: Patent
  • Summary: This patent presents a novel method for evaluating customer demand using AI-driven analytics, enhancing precision in product development and market segmentation.

Conclusion

Dr. Tzu-Chien Wang is a strong candidate for the Best Researcher Award, given his expertise in AI, machine learning, and business intelligence, along with his demonstrated contributions to academia and industry. His innovative research, patents, and funded projects underscore his impact. By expanding global collaborations, diversifying his research themes, and increasing engagement in AI policy and ethics, he can further solidify his standing as a leading researcher in artificial intelligence