Kaiwei Jia | Data factor research | Best Researcher Award

Mr. Kaiwei Jia –  Data factor research – Best Researcher Award

Alignment with Award Category

Professor Jia’s multi-disciplinary expertisepolicy relevance, and proven scholarly output position him as a strong fit for the Best Researcher Award or Excellence in Innovation category. His academic publications, authoritative books, and active role in statistical and economic policymaking embody the kind of sustained excellence and impact that this award seeks to recognize.

Liaoning Technical University| China

Profile

Orcid

Scopus

🎓Early Academic Pursuits 

Education and Training

From the onset of his academic career, Professor Kaiwei Jia demonstrated an exceptional aptitude for economics and statistics. After completing his postgraduate education, he went on to earn a Ph.D. in Economics, further cementing his commitment to understanding and influencing financial systems. Not one to rest on his laurels, he pursued postdoctoral research in statistics, developing a strong foundation in data-driven economic analysis. This combination of economics and statistics would later become the cornerstone of his teaching, research, and professional endeavors.

💼Professional Endeavors 

Academic Positions

Professor Jia currently serves as the Vice Dean of the School of Business Administration at Liaoning Technical University, where he plays a pivotal role in shaping academic strategies and curricula. His influence extends beyond his university role; he is also an esteemed member of the Liaoning Provincial Teaching Guidance Committee for Finance, a platform through which he contributes to the broader academic development of financial education in the province. His academic titles include Professor and Doctoral Supervisor in Management Science and Engineering, roles that signify his leadership in the field and his commitment to mentoring the next generation of economists and researchers.

📚Contributions and Research Focus on Data factor research

Professor Jia’s research interests span a wide range of critical and contemporary topics. He focuses on Financial stability and risk management, Governance and risk prevention of financial institutions, Monetary policy theory and methodology, Econometric methods and Green finance and climate finance. This diversity reflects his understanding of the dynamic nature of financial systems and the growing importance of sustainability in economic policy. His work in climate finance and green finance is especially noteworthy, addressing the urgent need for environmentally responsible financial practices.

🏆Accolades and Recognition 

Professor Jia’s scholarly contributions have earned him several prestigious awards are First Prize, 7th Liaoning Provincial Outstanding Achievement Award in Statistical Sciences and Second Prize, Liaoning Provincial Philosophy and Social Science Achievement Award. These accolades reflect not only the academic rigor of his work but also its societal relevance and impact.

🌍 Impact and Influence 

Community Impact

Through his research, teaching, and professional service, Professor Jia has made notable contributions to the understanding of financial contagion and financial system security. His analytical frameworks and models are used by scholars and policymakers alike, particularly in addressing challenges related to financial crises and systemic risks. His expertise in monetary policy and econometric methods continues to influence both academic research and financial regulation strategies.

🔮Legacy and Future Contributions 

As a doctoral supervisor, Professor Jia is actively shaping the next generation of researchers. His mentorship is marked by a balance of theoretical rigor and practical application, encouraging students to tackle pressing economic issues with innovative methods. Looking forward, his work in green and climate finance positions him at the forefront of sustainable financial research, a field of growing importance in the era of climate change. His legacy will likely include a body of research that not only advanced academic knowledge but also provided solutions to real-world financial and environmental challenges.

 

Conclusion

Professor Kaiwei Jia embodies the ideal blend of scholar, educator, and thought leader. His career is marked by excellence in academic teaching, rigorous research, and meaningful contributions to policy and practice. From his foundational work in econometrics to his pioneering research in financial risk and climate finance, he has continually pushed the boundaries of knowledge. With numerous publications, awards, and leadership roles, Professor Jia has established a formidable legacy—one that will inspire future scholars and shape the field of economics and finance for years to come.

📚Publications

Research on the Impact of Data Factors on Enterprise Green Innovation—Evidence from Chinese Manufacturing Enterprises

Authors: K., Jia, Kaiwei

Journals: Sustainability (Switzerland), 

Did the “double carbon” policy improve the green total factor productivity of iron and steel enterprises? a quasi-natural experiment based on carbon emission trading pilot

Authors: :Xu, W.; Jiang, C.; Jia, K.; Yu, X.

Journals: Frontiers in Energy Research

Digital financial and banking competition network: Evidence from China

Authors: Jia, K.; He, Y.; Mohsin, M.

Journals: Frontiers in Psychology

Construction and empirical of investor sentiment evaluation system based on partial least squares,偏最小二乘的投资者情绪评价体系构建及实证

Authors:  Li, B.; Zhao, B.; Wu, J.; Jia, K.

Journals: Liaoning Gongcheng Jishu Daxue Xuebao (Ziran Kexue Ban)/Journal of Liaoning Technical University (Natural Science Edition)

Empirical research of risk correlation based on Copula function method,基于 Copula 函数方法的风险相关性实证研究

Authors:  Li, B.; Zhao, B.; Jia, K.; Wu, J.

Journals: Liaoning Gongcheng Jishu Daxue Xuebao (Ziran Kexue Ban)/Journal of Liaoning Technical University (Natural Science Edition)

 

Mingxi Li | FinTech | Best Researcher Award

Ms. Mingxi Li  –  FinTech  –  Best Researcher Award

University of Illinois Urbana-Champaign | United States

      Profiles

Orcid

 

📍Current Position

Graduate Student, University of Illinois Urbana-Champaign (UIUC)
Mingxi Li is currently pursuing a Master’s degree in Predictive Analytics and Risk Management at UIUC, United States. Since August 2023, Mingxi has been deepening his expertise in data-driven methodologies and predictive modeling, holding an impressive GPA of 3.89. His coursework has focused on cutting-edge subjects such as Artificial Intelligence, Statistical Learning, Advanced Predictive Analytics, and Applied Bayesian Analysis, which have provided him with a solid foundation in risk management and predictive analytics

 

📝Publication Achievements

Mingxi’s research work has already gained visibility through two significant publications. In 2024, he co-authored a study, “Predicting Body Composition in the U.S. Population Using Machine Learning Models,” published in Medicine & Science in Sports & Exercise. This work focuses on applying machine learning to predict body composition metrics, contributing valuable insights to health-related AI applications. Additionally, an upcoming article in the North American Journal of Economics and Finance titled “Regional FinTech Development and Total Factor Productivity Among Firms: Evidence from China” is set to be published in 2025. This paper examines the impact of FinTech development on productivity, reflecting Mingxi’s versatility in applying AI to diverse fields, including finance.

 

🔍Ongoing Research

Mingxi’s ongoing research projects center on leveraging machine learning and predictive analytics across various fields. His recent project on a Recommendation System for Amazon Products utilized an LDA-based recommendation model to improve collaborative filtering using NLP techniques. Another notable project involves Predictive Modeling in Flight Data, where he employed Random Forest algorithms to predict flight ground times with accuracy-enhancing methods such as feature engineering and performance evaluation.

 

🔬 Research Interests

Mingxi’s research interests are broad yet focused within predictive analytics, covering essential areas such as risk management, AI, and data science applications. His passion for bioinformatics, as evidenced by his machine learning model work in medical data, showcases his drive to explore interdisciplinary applications of AI, particularly in healthcare and finance.

 

🎓Academic Background

Mingxi graduated with a Bachelor’s degree in Finance from Southwest University of Political Science & Law, China, in 2022, where he maintained a solid GPA of 3.5. His finance education included a robust curriculum focused on Corporate Finance, Financial Supervision, Financial Risk Management, and Finance Engineering. His journey into predictive analytics at UIUC allows him to merge his financial knowledge with AI, making him uniquely qualified for data-intensive finance roles.

 

🏆Scholarships and Awards 

Mingxi has shown exemplary academic performance, achieving a GPA of 3.89 in a rigorous program at UIUC. His dedication has not only earned him high grades but also contributed to several impactful projects in fields as varied as finance, health, and technology.

 

🧬Bioinformatics 

Mingxi’s work on predictive models for heart disease reflects his engagement with bioinformatics, where he applied machine learning models, such as Random Forest and XGBoost, to identify key predictors of heart disease with an accuracy of 83%. This expertise emphasizes his interdisciplinary skillset and commitment to using data science to solve real-world health issues.

 

🌐Professional Associations 

As part of his graduate journey, Mingxi actively engages in professional associations related to finance, data science, and risk management. These affiliations allow him to stay current on industry trends, collaborate with other professionals, and participate in discussions that shape his research and career path.

 

 📚Training & Workshops 

Mingxi has attended workshops focused on AI tools, machine learning, and data analytics, enhancing his technical expertise in Python, R, SQL, SPSS, MATLAB, and more. These sessions have equipped him with the skills needed to analyze and interpret complex datasets efficiently, preparing him for high-demand roles in the analytics field.

 

🎤Oral Presentations and🗣️Thought Leadership 

Mingxi has presented his projects at academic and professional platforms, particularly those related to predictive modeling in health and finance. His ability to effectively communicate complex models and their implications for real-world applications demonstrates his readiness for roles that require both technical expertise and client-facing skills.

 

🧑‍🔬Tasks Completed as a Researcher 

Mingxi’s portfolio includes various analytical projects with a strong research component, such as his work on Amazon’s Recommendation System and Flight Data Predictive Modeling. His ability to manage data processing, feature engineering, and model evaluation highlights his technical skills and attention to detail. Additionally, his role in developing predictive models for employee attrition and heart disease underlines his commitment to impactful, data-driven insights.

 

🚀Success Factors 

Mingxi’s success stems from a unique combination of analytical acumen, technical skills, and a proactive attitude toward interdisciplinary research. His expertise in both finance and data science, combined with his practical experience in machine learning and predictive analytics, gives him a competitive edge. His participation in projects such as Amazon’s recommendation system exemplifies his adaptability and creativity in solving diverse problems.

 

🧪Publications & Laboratory Experience

Mingxi’s laboratory and data analysis experience are well-documented through his publications and projects. His exposure to various data-processing environments and use of analytical tools like Stata, SPSS, and SQL reflect a comprehensive skill set. His publication on body composition prediction and ongoing work in FinTech analytics attest to his research capabilities and laboratory expertise.

 

🔍 Conclusion

Mingxi Li stands out as a dynamic and versatile candidate with strengths in predictive analytics, risk management, and data science. His educational background, bolstered by hands-on experience in finance and machine learning, positions him as a valuable asset to any data-intensive field. Mingxi’s interdisciplinary knowledge, combined with his commitment to innovation, will likely lead him to make significant contributions to both academia and industry.

📚Publications

Regional FinTech development and total factor productivity among firms: Evidence from China

     Authors: Yunzhong Li; Chengfang Ye; Mingxi Li; Wai Yan Shum; Fujun Lai

     Journal:  The North American Journal of Economics and Finance

Predicting Body Composition In The U.S. Population Using Machine Learning Models

       Authors: Huaijin Xu; Jason Situ; Ruibo Hou; Mingxi Li; Xiaotian Gao

       Journal: Medicine & Science in Sports & Exercise