Yang Yang | Computational Modeling | Best Researcher Award

Mr. Yang Yang | Computational Modeling | Best Researcher Award

National University of Sciences & Technology (NUST), China

👨‍🎓Profiles

🌱 Early Academic Pursuits

Yang Yang's academic journey began with a strong foundation in artificial intelligence and data mining. His keen interest in open-world data mining led him to explore innovative methods for handling complex, evolving datasets. As a student, he displayed exceptional analytical abilities and a deep curiosity for AI-driven solutions. This early dedication laid the groundwork for his later contributions to AI research and interdisciplinary applications.

💼 Professional Endeavors

Currently a professor at Nanjing University of Science and Technology, Yang Yang has established himself as a leading researcher in artificial intelligence. His professional journey includes significant contributions to theoretical and applied AI, particularly in the fields of smart agriculture and smart education. As an active member of the IEEE, he has engaged in numerous high-impact projects, shaping the landscape of AI research and its real-world implementations.

🔬 Contributions and Research Focus

Yang Yang specializes in open-environment data mining, addressing key challenges such as modal interaction, decision adaptation, and model evolution. His work has resulted in groundbreaking solutions for reliable multi-modal representation, robust inference decision-making, and continuous evolution modeling. These advancements have significantly improved the robustness of AI models in dynamic environments, making them more adaptable to changes in data features, labels, and content across various tasks. His research has played a pivotal role in enhancing AI-driven decision-making in practical applications.

🌍 Impact and Influence

With an impressive citation index of 1,289, Yang Yang's research has been widely recognized and referenced by esteemed academicians and Fellows of globally renowned societies such as IEEE, ACM, and AAAS. His innovative methodologies have influenced AI research and have been successfully implemented in smart agriculture and smart education, contributing to advancements in precision farming and intelligent learning systems.

📚 Academic Citations and Recognitions

Yang Yang has published 22 papers in top-tier SCI, IEEE, and ACM journals, many of which are considered foundational in open-world data mining. His outstanding contributions earned him the Best Paper Award at ACML 2017, highlighting his excellence in AI research. Additionally, his papers have been referenced in prestigious international journals and conferences, further establishing his authority in the field.

🛠️ Technical Skills

Yang Yang possesses expertise in:
✅ Open-world data mining
✅ AI-driven decision-making models
✅ Multi-modal representation learning
✅ Continuous evolution modeling
✅ Smart agriculture and education applications

His ability to bridge AI theory with practical applications has set new benchmarks in interdisciplinary AI research.

🎓 Teaching Experience

As a professor, Yang Yang is deeply committed to mentoring and guiding students in the fields of AI and data science. His expertise has helped shape the next generation of AI researchers by providing them with a strong foundation in theoretical and applied AI. His involvement in prestigious AI competitions, where he has won 20 championships, further demonstrates his dedication to both learning and teaching.

🔍 Research Projects and Patents

Yang Yang has led several high-profile research projects, including the Young Scientists Project of the National Key Research and Development Program on Autonomous Software for the Application of Scientific Data in Agricultural Breeding. His research has resulted in three patents, showcasing his ability to transform theoretical AI advancements into tangible, real-world innovations.

🚀 Legacy and Future Contributions

Yang Yang’s research continues to push the boundaries of AI by focusing on the development of more adaptive and resilient AI models. His contributions to smart agriculture and smart education are paving the way for future innovations in AI-driven industries. His legacy will be defined by his ability to bridge the gap between theoretical AI research and its practical, real-world applications. Moving forward, he aims to expand his research into more interdisciplinary fields, further enhancing AI's impact on society.

📖Notable Publications

Adaptive deep models for incremental learning: Considering capacity scalability and sustainability
Authors: Y. Yang, D.W. Zhou, D.C. Zhan, H. Xiong, Y. Jiang
Journal/Conference: Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD)
Year: 2019

Complex object classification: A multi-modal multi-instance multi-label deep network with optimal transport
Authors: Y. Yang, Y.F. Wu, D.C. Zhan, Z.B. Liu, Y. Jiang
Journal/Conference: Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD)
Year: 2018

Learning to classify with incremental new class
Authors: D.W. Zhou, Y. Yang, D.C. Zhan
Journal/Conference: IEEE Transactions on Neural Networks and Learning Systems
Year: 2021

Deep learning for fixed model reuse
Authors: Y. Yang, D.C. Zhan, Y. Fan, Y. Jiang, Z.H. Zhou
Journal/Conference: Proceedings of the AAAI Conference on Artificial Intelligence
Year: 2017

Semi-supervised multi-modal multi-instance multi-label deep network with optimal transport
Authors: Y. Yang, Z.Y. Fu, D.C. Zhan, Z.B. Liu, Y. Jiang
Journal/Conference: IEEE Transactions on Knowledge and Data Engineering
Year: 2019

 

Edmund Agyemang | Analytical Techniques | Best Researcher Award

Mr. Edmund Agyemang | Analytical Techniques | Best Researcher Award

University of Texas Rio Grande Valley, United States

👨‍🎓Profiles

🌱 Early Academic Pursuits

Edmund Fosu Agyemang’s academic journey has been a testament to dedication and excellence in the field of statistics. His early foundation in the sciences began at Aggrey Memorial A.M.E Zion Senior High School, where he earned accolades for his mathematical prowess. His pursuit of higher education at the University of Ghana, where he earned both his Bachelor’s and Master’s degrees in Statistics, laid the groundwork for his future research endeavors. His Master’s research, which focused on Bayesian Estimation of Presidential Elections, demonstrated his early interest in applying statistical methodologies to real-world issues.

🧠 Professional Endeavors and Contributions

Agyemang’s professional career reflects a blend of research, teaching, and consulting work, aimed at advancing statistical applications across sectors. His role as an adjunct faculty member at Ashesi University and his work as a Graduate Research Assistant at the University of Texas Rio Grande Valley (UTRGV) have been pivotal in shaping his academic trajectory. He has contributed to multiple fields, including machine learning, time series analysis, and data science, particularly in the context of healthcare and public policy. His consultancy work with organizations like the Ministry of Finance in Ghana on tax policy and the TV3 Election Command Center is an example of how his research has influenced both public and private sectors.

📊 Research Focus and Goals

Agyemang’s research interests are rooted in applied biostatistics with interdisciplinary applications, focusing on machine learning in health, time series analysis of health data, and the design and analysis of experiments. His current research includes exploring the intersection of artificial intelligence and healthcare, specifically using statistical, neural, and hybrid-based architectures to forecast the spread of Influenza A. His commitment to continuing his education, producing impactful research, and contributing to academia while uplifting society reflects his broader goals.

🔬 Impact and Influence

Agyemang’s impact extends beyond his direct research contributions. As a member of the editorial board for several academic journals, including the Journal of HIV/AIDS Research and Journal of Multidisciplinar, he has positioned himself as a thought leader in his field. His work as a peer reviewer for journals like Heliyon and Studies in Educational Evaluation further demonstrates his influence in shaping global academic discourse. Additionally, his involvement in academic conferences—such as the Joint Conference on Science and Technology in Dubai and the International Mathematics and Statistics Student Research Symposium—highlights his role in the global academic community.

🎓 Teaching Experience

Agyemang has taught and assisted in a wide range of courses, contributing to the development of future statisticians and researchers. He has served as an adjunct faculty member, lead tutor, graduate assistant, and teaching assistant at several institutions, including Ashesi University and the University of Ghana. His diverse teaching experience spans topics such as introductory statistics, precalculus, applied calculus, statistical inference, and time series analysis. Through his pedagogical efforts, he has empowered students to grasp complex statistical concepts and develop the skills necessary to solve real-world problems.

💻 Technical Skills

Agyemang’s technical proficiency is a hallmark of his academic and professional endeavors. He is skilled in using statistical software tools such as R, Python, SAS, STATA, and IBM SPSS, which he applies to a variety of research projects. His expertise in reproducible research and publishing is evident in his use of LATEX and R Markdown for scientific report writing. These technical abilities have enabled him to contribute to cutting-edge research in applied biostatistics, machine learning, and data science, particularly in the health sector.

🌍 Legacy and Future Contributions

Agyemang’s academic journey is poised to leave a lasting legacy, not only through his research but also through his commitment to mentorship and service to society. His involvement in volunteer activities, including serving as an international student buddy at UTRGV and leading student mentor-mentee programs at Ashesi University, demonstrates his dedication to empowering others. Looking ahead, his future contributions will likely continue to focus on leveraging statistical and machine learning techniques to address pressing global challenges, particularly in the healthcare and public policy domains.

🏆 Awards and Recognitions

Agyemang’s exceptional work has earned him numerous awards and recognitions. These include the Outstanding Masters Research Performance Award, the Presidential Research Fellowship at UTRGV, and the Best MPhil Statistics Student award at the University of Ghana. His excellence in teaching and research has also been acknowledged through honors such as the Honor Roll for Academic Excellence and the Best Graduate Research Assistant award. These accolades are a testament to his unwavering commitment to excellence in all facets of his academic and professional life.

🌟 Future Directions and Aspirations

As Agyemang continues his research at UTRGV, his goal remains to contribute to the advancement of statistical methodologies in healthcare and public policy. His ongoing work on forecasting health data with AI models will likely have significant implications for predicting disease outbreaks and improving public health responses. Ultimately, he envisions a dual career as a research scientist and educator, transferring knowledge and empowering the next generation of statisticians and researchers.

📖Notable Publications

    • A Gaussian Process Regression and Wavelet Transform Time Series approaches to modeling Influenza A
      • Authors: Edmund Fosu Agyemang
      • Journal: Computers in Biology and Medicine
      • Year: 2025
      • DOI: 10.1016/j.compbiomed.2024.109367
    • Anomaly detection using unsupervised machine learning algorithms: A simulation study
      • Authors: Edmund Fosu Agyemang
      • Journal: Scientific African
      • Year: 2024
      • DOI: 10.1016/j.sciaf.2024.e02386
    • Predicting Students’ Academic Performance Via Machine Learning Algorithms: An Empirical Review and Practical Application
      • Authors: Edmund Fosu Agyemang, Joseph Agyapong Mensah, Obu-Amoah Ampomah, Louis Agyekum, Justice Akuoko-Frimpong, Amma Quansah, Oluwaferanmi M. Akinlosotu
      • Journal: Computer Engineering and Intelligent Systems
      • Year: 2024
      • DOI: Not provided
    • A GARCH-MIDAS approach to modelling stock returns
      • Authors: Ezekiel NN Nortey, Ruben Agbeli, Godwin Debrah, Theophilus Ansah-Narh, Edmund Fosu Agyemang
      • Journal: Communications for Statistical Applications and Methods
      • Year: 2024
      • DOI: 10.29220/csam.2024.31.5.535
    • 10th Annual Meeting of Asian Council of Science Editors (Certificate of Attendance)
      • Authors: Edmund Fosu Agyemang
      • Event: 10th Annual Meeting of Asian Council of Science Editors
      • Year: 2024
    • 5th Asian Conference on Science, Technology & Medicine (Certificate of Attendance)
      • Authors: Edmund Fosu Agyemang
      • Event: 5th Asian Conference on Science, Technology & Medicine
      • Year: 2024