Dr. Irsa Sajjad, Machine Learning, Best Researcher Award
Doctorate at Central South University, China
Profiles
Academic Background:
Dr. Irsa Sajjad is a Research Scholar at Central South University, Changsha, China, known for her expertise in hybrid choice modeling and machine learning. Her innovative research integrates deep learning and attention mechanisms, significantly advancing methodologies and applications in the field.
Education:
Dr. Irsa’s academic background is marked by advanced studies in machine learning and choice modeling, equipping her with a comprehensive understanding of both theoretical concepts and practical applications in her field.
Professional Experience:
Dr. Irsa has actively contributed to significant research projects, including developing novel hybrid choice models and Gaussian mixture models. She has collaborated with industry partners on machine learning applications and data visualization techniques and is currently publishing a book on advanced choice modeling.
Research Interests:
Dr. Irsa’s research interests center on Hybrid Choice Models (HCM), particularly those incorporating attention mechanisms, deep learning, and latent class analysis. Her work aims to enhance the accuracy and effectiveness of choice modeling by addressing complex data structures and improving analytical insights.
📖 Publications:
Advancing Covid-19 Data Modeling: Introducing a Neutrosophic Extension of Ramous Louzada Distribution
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Authors: Al-Aziz, S.N., Sajjad, I., Dar, J.G., El Bagoury, A.A.-A.H.
- Journal: International Journal of Neutrosophic Science
- Year: 2023
Quantile regression-ratio-type estimators for mean estimation under complete and partial auxiliary information
- Authors: Shahzad, U., Hanif, M., Sajjad, I., Anas, M.M.
- Journal: Scientia Iranica
- Year: 2022
Mathematical Simulation and Numerical Computation of the Temperature Profiles in the Peripherals of Human Brain during the Tepid Sponge Treatment to Fever
- Authors: Aijaz, M., Dar, J.G., Almanjahie, I.M., Sajjad, I.
- Journal: Computational and Mathematical Methods in Medicine
- Year: 2022
Imputation based mean estimators in case of missing data utilizing robust regression and variance–covariance matrices
- Authors: Shahzad, U., Al-Noor, N.H., Hanif, M., Sajjad, I., Muhammad Anas, M.
- Journal: Communications in Statistics: Simulation and Computation
- Year: 2022
A new family of robust regression estimators utilizing robust regression tools and supplementary attributes
- Authors: Sajjad, I., Hanif, M., Koyuncu, N., Shahzad, U., Al-Noor, N.H.
- Journal: Statistics in Transition New Series
- Year: 2021