Muhammad Nouman Noor | Artificial Intelligence | Research Excellence Award

Muhammad Nouman Noor | Artificial Intelligence | Research Excellence Award

National University of Computer and Emerging Sciences Islamabad |  Pakistan

Dr. Muhammad Nouman Noor is an accomplished researcher in computer vision, deep learning, and digital image processing, with a focus on AI-driven healthcare and software engineering solutions. He has authored numerous high-impact journal articles, conference papers, and book chapters, covering areas such as gastrointestinal disease recognition, skin lesion analysis, and optimization of deep learning models for medical diagnostics. He has supervised multiple master’s theses, bridging theoretical research with practical AI applications, and actively contributes to the scientific community as a reviewer and editorial member for reputed journals and conferences. His work effectively connects industry and academia, advancing machine learning and computer vision technologies in real-world scenarios. He has received over 220 citations, with an h-index of 8 and an i10-index of 7, reflecting the impact and recognition of his research contributions.

Citation Metrics (Google Scholar)

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Citations
226

h-index
8

i10-index
7


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Featured Publications

Aizhen Ren | Machine learning | Excellence in Innovation Award

Prof. Aizhen Ren | Machine learning
| Excellence in Innovation Award

College of Science, Inner Mongolia Agricultural University | China

Prof. Aizhen Ren research work centers on machine learning, deep learning, statistical inference, and their applications in economics, finance, and computational biology. A significant portion of the research contributes to the development and mathematical validation of advanced bootstrap techniques, including the speedy double bootstrap method, which enhances the statistical reliability of phylogenetic tree estimation and provides third-order accurate unbiased p-values. These methods have been applied to evolutionary analyses of horse breeds, supporting biological and genomic investigations with high-precision statistical tools. In the financial domain, the research explores machine-learning-based trend prediction models, such as multiscale bootstrap-corrected random forest voting systems used to forecast stock index movement with improved accuracy and inference reliability. Additional work includes the construction of financial risk early-warning models for listed companies using multiple machine learning approaches, reflecting an interdisciplinary blend of statistics, computing, and economics. Contributions also extend to consumption behavior analysis employing regression-based models, as well as deep learning ensemble frameworks integrating empirical mode decomposition and temporal convolutional networks for time-series prediction tasks. The released R package SDBP operationalizes the novel bootstrap methodology, enabling researchers to compute unbiased p-values efficiently. Overall, the research advances methodological innovation and practical applications across data-intensive scientific domains.

 Profile: Orcid

Featured Publications

Ren, A., Duan, Y., & Liu, J. (2025). Multiscale bootstrap correction for random forest voting: A statistical inference approach to stock index trend prediction. Mathematics, 13(22), 3601. https://doi.org/10.3390/math13223601

Ren, A., Ishida, T., & Akiyama, Y. (2020). Mathematical proof of the third order accuracy of the speedy double bootstrap method. Communications in Statistics – Theory and Methods, 49(16), 3950–3964. https://doi.org/10.1080/03610926.2019.1594295

Ren, A., Ishida, T., & Akiyama, Y. (2013). Assessing statistical reliability of phylogenetic trees via a speedy double bootstrap method. Molecular Phylogenetics and Evolution, 67(2), 429–435. https://doi.org/10.1016/j.ympev.2013.02.011